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Article

Assessing Lifestyle Behaviours of People Living with Neurological Conditions: A Panoramic View of Community Dwelling Australians from 2007–2018

1
Neuroepidemiology Unit, Centre of Epidemiology and Biostatistics, Melbourne School of Population and Global Health, The University of Melbourne, Parkville, VIC 3010, Australia
2
Menzies Institute for Medical Research, University of Tasmania, Hobart, TAS 7000, Australia
3
Roy Morgan Research Institute, Tonic House, Melbourne, VIC 3000, Australia
*
Author to whom correspondence should be addressed.
J. Pers. Med. 2021, 11(2), 144; https://doi.org/10.3390/jpm11020144
Submission received: 17 January 2021 / Revised: 4 February 2021 / Accepted: 16 February 2021 / Published: 19 February 2021

Abstract

:
Neurological disorders pose a substantial health and economic burden to the individual and society, necessitating strategies for effective prevention and disease management. Lifestyle behaviours play a role in risk and management of some neurological disorders; however, overlap between lifestyle behaviours across disorders has not been well explored. We used log-binomial regression to assess associations of selected lifestyle behaviours in community-dwelling Australians (n = 192,091), some of whom self-reported Alzheimer’s disease (AD), motor neurone disease (MND), multiple sclerosis (MS), Parkinson’s disease (PD) or stroke. Of six lifestyle behaviours, undertaking physical activity was inversely associated with the presence of all neurological disorders except PD. Smoking was positively associated with MND and stroke, and inversely associated with PD. Participants with AD and stroke shared inverse associations with cognitive engagement, face-to-face social interaction and stress-reducing activities, and MS was positively associated with online social interaction and stress-reduction activities. Of eleven food and beverage consumption categories, no associations were seen in MND, ten categories were inversely associated with people with AD or stroke, and six of these with PD. Vegetable and soft drink consumption were associated with MS. Further detailed assessment of commonalities in lifestyle behaviours across neurological disorders may inform potential strategies for risk reduction across disorders.

1. Introduction

The overall burden of neurological disorders continues to increase with an aging population. In 2017, it was estimated that 43% of the Australian population had been diagnosed with a neurological disorder, among these were commonly stroke, Alzheimer’s disease (AD) and dementia, and less commonly motor neurone disease (MND), multiple sclerosis (MS) and Parkinson’s disease (PD) [1]. These disorders present with a heterogenous array of symptoms including cognitive, psychological and physical impairments, which contribute to reduced quality of life for the individual and pose significant societal and economic burden [2,3,4]. These current and increasing burdens necessitate the identification of effective and targeted strategies to achieve risk reduction, manage symptoms, and delay progression.
Modifiable lifestyle behaviours, including diet, physical activity, smoking, cognitive reserve and social interaction have been implicated in the onset and progression of some neurological disorders [5,6,7]. Diets high in saturated fats, including red meat and processed foods, have been associated with increased risk of AD, PD, MS and stroke; while high fruit, vegetable and whole grain intake have been associated with reduced risk [8,9,10,11]. Physical activity has been shown to have benefits for healthy aging and neuroplasticity [12,13], with a minimum of 150 min/week of moderate-intense activity being the international recommendation for adults in maintaining a healthy lifestyle [14,15]. Smoking is similarly well-established as a risk factor for dementia, stroke and MS [6,16,17]; its role for PD risk remains debatable with some studies showing a protective effect [5,18]. Cognitive reserve, enhanced by engaging in physical, leisure and intellectually stimulating activities, may be a mechanism for protection against cognitive and functional decline in the presence of brain pathology [6]. Increasing social interaction and reducing stress are also lifestyle recommendations for optimal brain health [19,20].
The evidence for the role of lifestyle behaviours in risk and management of neurological disorders continues to grow, likely acting concurrently for optimal benefits. Indeed, multimodal lifestyle behaviours, combining healthy diet, increased exercise and cognitive training, have shown improved cognitive outcomes in at-risk elderly people and people with MS [21,22] and a reduced risk of secondary stroke and AD [23,24], suggesting a multi-dimensional approach may be beneficial across different disorders.
Despite the evident role of lifestyle in the prevention and management of different neurological disorders, the epidemiological landscape of lifestyle associations across disorders remains under-examined. Herein, we describe and compare the distributions of modifiable lifestyle behaviours in community-dwelling Australians with and without one of five neurological conditions—AD, PD, MND, MS and stroke. In doing so, we aim to identify shared lifestyle profiles of people with these conditions, which may in turn shed new light on targeted risk reduction and effective self-management strategies.

2. Materials and Methods

2.1. Study Design and Participants

Each year, 50,000 randomly selected Australian households in 11 major geographic regions are sampled by Roy Morgan Research Institute [25]. The youngest consenting English-speaking member of the household, aged ≥14 years, is interviewed face-to-face by a trained professional. During the interview, the establishment survey including participant demographics is completed and entered into a secure database. Interviewees are then provided with a hard copy of the Single Source Questionnaire (SSQ) for self-completion and asked to return it by post within 30 days to Roy Morgan Research Institutes’s Head Office. Completion is incentivised by entry to a monthly monetary draw prize valued at $1000.
The SSQ comprises a 112-page survey, with 10 sections on various consumer behaviours including interests and attitudes, health conditions, lifestyle and purchasing behaviours, and service and technology utilisation. Data from SSQ surveys are scanned and cleaned for analysis on a quarterly cycle.

2.2. Data Collection and Measurement

Participants provided informed consent to Roy Morgan Research Institute for their data to be used for research purposes. The current study was approved by The University of Melbourne, Melbourne School of Population and Global Health Human Ethics Advisory Group, project #1953821.1.
Data extracted includes de-identified adults aged ≥18 years that were interviewed from January 2007–September 2018. SSQ non-responder versus responder biases were analysed based on demographics queried in the face-to-face interview. For main analyses, data inclusion was limited to SSQ responders, and data was extracted on demographics, self-reported neurological disorders and researcher-defined lifestyle behaviours using select variables captured in the SSQ (Table 1).

2.2.1. Classification of Neurological Disorders

Neurological disorders were based on a self-reported tick-box selection of 21 brain and nervous system conditions within 20 condition categories from the section “About your Health”. Data were restricted to those reported for ’You’, in response to the question “Which of the following illnesses or conditions have you or any other member of your household had in the last 12 months?”. Five of 21 listed brain and nervous system conditions were selected as outcome variables: AD, MND, MS, PD and stroke.
Sixteen other SSQ-defined nervous system conditions comprised nine specific neurological conditions (cerebral palsy, chronic fatigue syndrome, epilepsy, nerve damage, neuralgia, neuritis, neuropathy, spinal stenosis, mini stroke) and seven non-specific conditions (face pain, fibromyalgia, frequent headaches, memory problems, meningitis, migraine headaches, tingling sensations).
Participants reporting having more than one of the five conditions of interest (N = 58), and those reporting the other nine specific conditions (N = 722) were excluded from analysis to allow specificity of the outcome and clarity of signal. The seven non-specific conditions were included in both the comparator population (CP) and neurological disorders of interest populations.
The CP were thus participants who had not self-reported having AD, MND, MS, PD, stroke or any of the nine specific neurological conditions.

2.2.2. Demographics

Demographic variables were categorised as follows: age into tertile year range; BMI according to Word Health Organisation definitions [26]; country of birth from a selection of 13 options: Australia or New Zealand (NZ), Europe, Asia or other (North America, Central and South America, South Pacific, Middle East, Africa, other); religion from a selection of 18 tick-box selection options including ‘No religion’ dichotomised as No/Yes; education dichotomised to No/Yes for the completion of a university degree; employment status as employed (full and part-time), unemployed, student/home duties, and retired; income aligned with Australian Taxation Office taxable income bracket [27]; remoteness based on postal codes; relationship status dichotomised to partnered (married, de facto, engaged, planning to marry) vs. not partnered (single, separated, divorced, widower); and living status dichotomised to lives with others (partner with/without children, single parent, with parents, boarder, shared household) vs. alone (living alone).

2.2.3. Lifestyle Behaviours

Selected SSQ variables were categorised to lifestyle behaviours identified as being associated with neuronal health in the literature (Table 1). These were then dichotimised (No/Yes) for regression analyses.

2.2.4. Food and Beverage Consumption

Food consumption was based on response to “Which of the following have you eaten in the last 7 days”, self-reported tick-box selection on 74 single items within six food categories from the section “Food and Beverages”. Selected food items were recategorised into seven groups (Table 1). Reported serves per day of fruit and vegetables were categorised as per Australian recommended daily serves of ≥2 and ≥5, respectively [28].
Beverage consumption was based on the response to “Consumed in the last 7 days”, self-reported tick-box selection on 36 single items, from which soft drinks, tea/coffee, and milk (included with dairy foods) were included for analysis (Table 1).
Alcohol consumption was based on the response to “Brands drunk in the last 7 days”, self-reported tick-box selection of brand for beer (n = 146), cider (n = 14), spirits (n = 93), and wine (bottled, cask, fortified, sparkling) and “other”; other were excluded from the analysis.

2.3. Statistical Analysis

SSQ responder bias was assessed using log-binomial regression [29]. Given the large sample size, reliance on statistical significance as a marker of differences resulted in every association being significantly different. We therefore utilised a crude cut-point of a >50% difference as a benchmark for material and meaningful differences, to inform the development of multivariable models for the primary associations of interest.
Characteristics of having one of the five neurological disorders as compared to the CP, were evaluated by log-binomial regression. Multivariable models were adjusted for age, sex and education, these model covariates having been selected on the basis of the literature review and a priori reasoning.

3. Results

3.1. Characteristics of SSQ Non-Responders and Responders

Of participants interviewed from January 2007 to September 2018 (n = 537,327), 36% (n = 192,091) returned the SSQ and were aged ≥18 years (Table 2).
Compared to non-responders, SSQ responders were more likely to be aged ≥40 years (PR 40–59 = 1.56; PR ≥60 = 1.84) than 18–39 years. Sex, country of birth, university education, employment status, household income, remoteness, partnered and living status, alcohol consumption and smoking status did not differ more than 50% between the two groups.

3.2. Demographics of Analysis Cohort

Participants with AD, PD or stroke were less likely to be female, and they were more likely to be female for MS (PRAD = 0.48; PRMS= 2.56; PRPD = 0.59; PRstroke = 0.56; Table 3). Participants with AD, MND, PD or stroke were more likely to be ≥60 years, while participants with MS were more likely to be aged 40–59 years. Participants with stroke were 29% more likely to be obese than the CP. Further, those with AD or stroke were 39% and 36% less likely to be university educated, respectively. Compared to CP, participants with any of the five neurological disorders were more likely to be unemployed or retired. Participants with MND or stroke were less likely to be partnered (PRMND = 0.50; PRstroke = 0.62) and those with MND or stroke were less likely to live with others (PRMND = 0.43; PRstroke = 0.68). Other characteristics are shown in Table 3.

3.2.1. Lifestyle Associations with Neurological Conditions

Participants with AD or stroke were 52% and 55% less likely to undertake cognitively engaging activities than the CP (Table 4). Participants with either AD, MND, MS or stroke were less likely to undertake physical activity (PRAD = 0.50; PRMND = 0.61; PRMS = 0.72; PRstroke = 0.69). Participants with MND or stroke were 2.1 and 1.5 times more likely to be current smokers than the CP, whereas those with PD were 43% less likely. Participants with AD or stroke were 62% and 55% less likely to socialise face-to-face, and those with MS were 68% more likely to socialise online. Participants with AD or stroke were 38% and 24% less likely to engage in stress-reducing activities than the CP, respectively, those with MS were 22% more likely.

3.2.2. Food and Beverage Associations with Neurological Disorders

Participants with AD were 55% less likely to consume bakery/cereals, 52% less likely to consume dairy, and 31% less likely to eat fish/seafood. Similar associations were observed among participants with stroke (Table 5).
Participants with AD, PD or stroke were less likely to consume fruit (PRAD = 0.54; PRPD = 0.78; PRstroke = 0.61) or vegetables (PRAD = 0.41; PRPD = 0.71; PRstroke = 0.56). Of participants who consumed fruit in the past 7 days, recommended daily serves were 21% less likely met by participants with stroke. Those with MS were 42% more likely to eat vegetables. Compared to the CP, participants with AD were 61% less likely to consume meat and almost half as likely to eat natural grains and snacks. Participants with PD or stroke were also less likely to consume those foods.
For beverages consumed in the preceding 7 days, participants with AD, PD and stroke were 39%, 33% and 51% less likely to consume alcohol, respectively, than the CP. Soft drinks were 26% less likely to be consumed by participants with MS and tea/coffee were 47% and 33% less likely to be consumed by those with AD or stroke, respectively.

4. Discussion

Understanding the overlap in lifestyle behaviours across neurological disorders provides important information on which to potentially base public health interventions and targeted self-management strategies for potential reduced risk as well as improved health. Cross-sectional population data collected annually over 11 years, from community-dwelling Australians, were pooled to assess associations between lifestyle behaviours and five neurological disorders. Undertaking physical activity was inversely associated with all neurological disorders, except PD. Participants with AD and stroke shared inverse associations across four of six lifestyle behaviours and ten of eleven food and beverage consumed categories. Six food and beverage consumed categories were additionally inversely associated with PD. Few associations were found with participants with MS and MND.
Sociodemographic characteristics were generally as expected, with participants with AD, PD and stroke being older males, and with MS more likely to be 40–59-year-old females. Across disorders, similarities were noted in being unemployed or retired, as well as income range, possibly attributable to older age and/or disability common to these disorders. Participants with MND or stroke were less likely to be partnered, and those with AD or stroke less likely to be educated. These and other demographic associations may assist in identifying resources and services required to provide appropriate support and care.
Physical activity was the only lifestyle behaviour shared across all neurological disorders, except PD, being inversely associated. While this aligns with the lack of physical activity undertaken by people with neurological disorders [6,30], it contradicts findings showing a protective impact on PD [31]. Our findings may be attributed to disease-associated disability, or limitations in data collection which queried physical activity broadly as undertaking either formal exercise or sport.
Inverse associations with ten food and beverage consumed categories were observed in participants with AD and stroke, and in participants with PD, with fruit, vegetable, meat, grains, snacks, and alcohol consumed. These findings may reflect the non-specific mode of assessing dietary intake and differential responding between cases and controls. Alternatively, they may reflect the concept of a role of the microbiota-gut-brain-axis in neurodegenerative disorders, whereby the dysregulation of intestinal microbiota through unbalanced nutrition, antibiotics, age, and infection may lead to pathological processes initiating in the gut and then spreading to the brain via the vagus nerve or circulatory system [32,33].
The importance of measuring quantities consumed is evident in associations persisting only between participants with stroke and fruit consumed, when the number of daily serves were assessed. Participants with MS were more and less likely to consume vegetables and soft drinks, respectively, perhaps reflective of a younger demographic’s attitudes of a healthy diet. The data captured precludes the ability to determine whether food and beverage consumption and avoidance were adopted after disease diagnosis on the basis of medical recommendations or self-management of symptoms. The shared inverse associations of food and beverages with AD, PD and stroke warrant longitudinal investigations employing a research-focused survey using validated tools for assessing foods consumed that capture serve quantities in addition.
Smoking was positively associated with MND and stroke and inversely associated in PD, aligning with previous studies showing smoking as a strong risk factor for MND and stroke and possibly neuroprotective for PD [34,35,36]. Although it is an established risk factor [17], we did not find an association between smoking and MS; it may be that the association is weak or dependent on interaction with other risk factors, or due to responders giving up smoking post-diagnosis.
Cognitive engagement, face-to-face social interaction, and undertaking hobbies as a proxy for stress-reducing activities, were inversely associated with AD and stroke. These findings support the concept of cognitive reserve, enhanced by participating in intellectually stimulating activities, in delaying or preventing cognitive decline in the presence of neuropathology [37]. Simultaneously, these activities may be considered stress-reducing, attenuating the impact of psychological stress on the risk of dementia and stroke [38,39]. In participants with MS, positive associations were seen with online social interaction and stress-reduction, likely reflective of the younger and majority female population; both demographics more likely to engage in such activities [40]. People with MS also have high usage of social media for health information and social support [41].
Overall, physical activity was the only shared lifestyle behaviour of AD, MS, MND and stroke. Interventions for regular exercise and sports may therefore effectively impact multiple neurological disorders. Our findings showed inverse associations with all lifestyle behaviours for both AD and stroke, aligning with the latter being an established risk factor for all-cause dementia [42], and the recognized coincidence of cerebrovascular disease and AD [43]. Alternatively, the similarities may be due to the classification of AD in cases of vascular dementia.
The associations between MS and lifestyle factors were different from other neurological disorders. This may be due to differences in demographic characteristics, cause, or symptoms among these disorders, or under-representation of people with MS in the cohort given SSQ responders comprised lower proportions of participants aged 18–39 years, the age range in which MS is usually diagnosed. MND was not associated with most lifestyle factors except physical activity and smoking.
Limitations are acknowledged and include SSQ responders representing only 36% of participants interviewed over 11 years, to contribute to a market research survey. Responder and non-responder characteristics were mostly similar, albeit responders comprising lower proportions of participants aged 18–39 years. Other limitations include measurement errors inherent with self-reported data, potential under-reporting due to the methodology of data collection, incomplete data, unverified clinical diagnosis, temporality of lifestyle behaviours before and after diagnosis and the co-occurrence of conditions which were excluded for clarity of signal. Despite the limitations, our study has important strengths, primarily extensive data variables from a large community-dwelling population that enable the comparison of numerous characteristics, including a range of lifestyle behaviours and food and beverage consumption, across neurological disorders, which may help direct future research in this area.

5. Conclusions and Implementation

The study identified some overlapping associations in lifestyle behaviours and food and beverage consumption in a large community-dwelling population with one of five self-reported neurological disorders. These analyses should be extended to include a comprehensive assessment of the impact of lifestyle behaviours on health outcomes in people with a neurological disorder, to better understand the overlapping role of lifestyle in risk minimisation and disease management.
Cross-sectional studies cannot assess the temporality between modifiable behav-iours and neurological disorders; however, they are important in exploring dis-ease-related characteristics that may inform the planning and allocation of health and research resources. Understanding overlapping relationships across similar disorders may facilitate appropriate and targeted risk reduction and improved self-management through non-invasive and cost-effective methods. Current relationships between life-style factors and neurological disorders need to be further assessed in longitudinal studies to allow the development of effective health interventions in this area.

Author Contributions

Conceptualization, N.N., G.A.J.; methodology, N.N., X.L., S.S.-Y.; validation, X.L.; formal analysis, N.N., X.L.; investigation, M.L.; resources, M.L., G.A.J., S.L.N.; data curation, N.N., S.S.-Y.; writing—original draft preparation, N.N., X.L., M.Y.; writing—review and editing, N.N., X.L., M.Y., S.S.-Y., S.L.N.; visualization, N.N.; supervision, N.N.; project administration, N.N.; funding acquisition, G.A.J., M.L. All authors have read and agreed to the published version of the manuscript.

Funding

Data collection and curation was funded by Roy Morgan Research Institute. The research component was funded by philanthropic gifts to the Neuroepidemiology Unit from Mr Wal Pisciotta and anonymous donors.

Institutional Review Board Statement

This study was approved by The University of Melbourne, Melbourne School of Population and Global Health Human Ethics Advisory Group, project #1953821.1.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Restrictions apply to the availability of these data. Data was obtained from Roy Morgan Research Institute and may be requested from M.L. with the permission of Roy Morgan Research Institute.

Acknowledgments

The authors gratefully acknowledge survey participants and data collectors and curators at Roy Morgan Research Institute.

Conflicts of Interest

M.L. is the CEO of Roy Morgan Research Institute and data custodian for the Single Source Data. The funders had no role in the study design, data collection, analyses, interpretation, in the writing of the manuscript or in the decision to publish the results.

References

  1. Mindgardens Neuroscience Network. Review of the Burden of Disease for Neurological, Mental Health and Substance Use Disorders in Australia. 2019. Available online: https://www.mindgardens.org.au/white-paper/ (accessed on 12 January 2021).
  2. Mitchell, A.J.; Kemp, S.; Benito-León, J.; Reuber, M. The influence of cognitive impairment on health-related quality of life in neurological disease. Acta Neuropsychiatr. 2010, 22, 2–13. [Google Scholar] [CrossRef]
  3. Gandy, M.; Karin, E.; Fogliati, V.J.; Meares, S.; Nielssen, O.; Titov, N.; Dear, B.F. Emotional and cognitive difficulties, help-seeking, and barriers to treatment in neurological disorders. Rehabil. Psychol. 2018, 63, 563–574. [Google Scholar] [CrossRef]
  4. Prisnie, J.C.; Sajobi, T.T.; Wang, M.; Patten, S.B.; Fiest, K.M.; Bulloch, A.G.; Pringsheim, T.; Wiebe, S.; Jette, N. Effects of depression and anxiety on quality of life in five common neurological disorders. Gen. Hosp. Psychiatry 2018, 52, 58–63. [Google Scholar] [CrossRef] [PubMed]
  5. Ascherio, A.; Schwarzschild, M.A. The epidemiology of Parkinson’s disease: Risk factors and prevention. Lancet Neurol. 2016, 15, 1257–1272. [Google Scholar] [CrossRef]
  6. Livingston, G.; Sommerlad, A.; Orgeta, V.; Costafreda, S.G.; Huntley, J.; Ames, D.; Ballard, C.; Banerjee, S.; Burns, A.; Cohen-Mansfield, J.; et al. Dementia prevention, intervention, and care. Lancet 2017, 390, 2673–2734. [Google Scholar] [CrossRef] [Green Version]
  7. Null, G.; Pennesi, L.; Feldman, M. Nutrition and Lifestyle Intervention on Mood and Neurological Disorders. J. Evid.-Based Integr. Med. 2017, 22, 68–74. [Google Scholar] [CrossRef]
  8. Iacoviello, L.; Bonaccio, M.; Cairella, G.; Catani, M.; Costanzo, S.; D’Elia, L.; Giacco, R.; Rendina, D.; Sabino, P.; Savini, I.; et al. Diet and primary prevention of stroke: Systematic review and dietary recommendations by the ad hoc Working Group of the Italian Society of Human Nutrition. Nutr. Metab. Cardiovasc. Dis. 2018, 28, 309–334. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  9. Barbaresko, J.; Lellmann, A.W.; Schmidt, A.; Lehmann, A.; Amini, A.M.; Egert, S.; Schlesinger, S.; Nöthlings, U. Dietary Factors and Neurodegenerative Disorders: An Umbrella Review of Meta-Analyses of Prospective Studies. Adv. Nutr. 2020, 11, 1161–1173. [Google Scholar] [CrossRef] [PubMed]
  10. Black, L.J.; Rowley, C.; Sherriff, J.; Pereira, G.; Ponsonby, A.-L.; Lucas, R.M. A healthy dietary pattern associates with a lower risk of a first clinical diagnosis of central nervous system demyelination. Mult. Scler. J. 2019, 25, 1514–1525. [Google Scholar] [CrossRef]
  11. Brink, A.C.V.D.; Brouwer-Brolsma, E.M.; Berendsen, A.A.M.; Van De Rest, O. The Mediterranean, Dietary Approaches to Stop Hypertension (DASH), and Mediterranean-DASH Intervention for Neurodegenerative Delay (MIND) Diets Are Associated with Less Cognitive Decline and a Lower Risk of Alzheimer’s Disease—A Review. Adv. Nutr. 2019, 10, 1040–1065. [Google Scholar] [CrossRef]
  12. Physical Exercise for Human Health. In Advances in Experimental Medicine and Biology; Springer International Publishing: Berlin/Heidelberg, Germany, 2020; pp. 303–315.
  13. Kraft, E. Cognitive function, physical activity, and aging: Possible biological links and implications for multimodal interventions. Aging Neuropsychol. Cogn. 2012, 19, 248–263. [Google Scholar] [CrossRef]
  14. World Health Organization. Global Recommendations on Physical Activity for Health. Available online: http://www.Who.Int/dietphysicalactivity/publications/9789241599979/en/ (accessed on 24 September 2020).
  15. Global Council on Brain Health. The Brain-Body Connection: GCBH Recommendations on Physical Activity and Brain Health; Global Council on Brain Health: Washington, DC, USA, 2016. [Google Scholar]
  16. Bailey, R.R. Lifestyle Modification for Secondary Stroke Prevention. Am. J. Lifestyle Med. 2016, 12, 140–147. [Google Scholar] [CrossRef]
  17. Degelman, M.L.; Herman, K.M. Smoking and multiple sclerosis: A systematic review and meta-analysis using the Bradford Hill criteria for causation. Mult. Scler. Relat. Disord. 2017, 17, 207–216. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  18. Mappin-Kasirer, B.; Pan, H.; Lewington, S.; Kizza, J.; Gray, R.; Clarke, R.; Peto, R. Tobacco smoking and the risk of Parkinson disease. Neurology 2020, 94, e2132–e2138. [Google Scholar] [CrossRef]
  19. Global Council on Brain Health. The Brain and Social Connectedness: GCBH Recommendations on Social Engagement and Brain Health; Global Council on Brain Health: Washington, DC, USA, 2017. [Google Scholar]
  20. Mitchell, M.B.; Cimino, C.R.; Benitez, A.; Brown, C.L.; Gibbons, L.E.; Kennison, R.F.; Shirk, S.D.; Atri, A.; Robitaille, A.; Macdonald, S.W.S.; et al. Cognitively Stimulating Activities: Effects on Cognition across Four Studies with up to 21 Years of Longitudinal Data. J. Aging Res. 2012, 2012, 1–12. [Google Scholar] [CrossRef] [Green Version]
  21. Ngandu, T.; Lehtisalo, J.; Solomon, A.; Levälahti, E.; Ahtiluoto, S.; Antikainen, R.; Bäckman, L.; Hänninen, T.; Jula, A.; Laatikainen, T.; et al. A 2 year multidomain intervention of diet, exercise, cognitive training, and vascular risk monitoring versus control to prevent cognitive decline in at-risk elderly people (FINGER): A randomised controlled trial. Lancet 2015, 385, 2255–2263. [Google Scholar] [CrossRef]
  22. Lee, J.E.; Bisht, B.; Hall, M.J.; Rubenstein, L.M.; Louison, R.; Klein, D.T.; Wahls, T.L. A Multimodal, Nonpharmacologic Intervention Improves Mood and Cognitive Function in People with Multiple Sclerosis. J. Am. Coll. Nutr. 2017, 36, 150–168. [Google Scholar] [CrossRef] [Green Version]
  23. Lawrence, M.; Pringle, J.; Kerr, S.; Booth, J.; Govan, L.; Roberts, N.J. Multimodal Secondary Prevention Behavioral Interventions for TIA and Stroke: A Systematic Review and Meta-Analysis. PLoS ONE 2015, 10, e0120902. [Google Scholar] [CrossRef] [Green Version]
  24. Dhana, K.; Evans, D.A.; Rajan, K.B.; Bennett, D.A.; Morris, M.C. Healthy lifestyle and the risk of Alzheimer dementia. Neurology 2020, 95, e374–e383. [Google Scholar] [CrossRef] [PubMed]
  25. Roy Morgan. How We Collect and Process Single Source Data in Australia. Available online: http://www.Roymorgan.Com/products/single-source/single-source-fact-sheets (accessed on 12 December 2020).
  26. WHO Body Mass Index—BMI. Available online: https://www.euro.who.int/en/health-topics/disease-prevention/nutrition/a-healthy-lifestyle/body-mass-index-bmi (accessed on 27 October 2020).
  27. Australian Taxation Office. Individual Income Tax Rates. Available online: https://www.ato.gov.au/rates/individual-income-tax-rates/?=top_10_rates (accessed on 1 January 2021).
  28. Australian Institute of Health and Welfare. Australia’s Health 2018; Australia’s Health Series no. 16. AUS 221; AIHW: Canberra, Australia, 2018. [CrossRef]
  29. Lee, J.; Tan, C.S.; Chia, K.S. A practical guide for multivariate analysis of dichotomous outcomes. Ann. Acad. Med. Singap. 2009, 38, 714–719. [Google Scholar]
  30. Kinnett-Hopkins, D.; Adamson, B.; Rougeau, K.; Motl, R. People with MS are less physically active than healthy controls but as active as those with other chronic diseases: An updated meta-analysis. Mult. Scler. Relat. Disord. 2017, 13, 38–43. [Google Scholar] [CrossRef]
  31. Fang, X.; Han, D.; Cheng, Q.; Zhang, P.; Zhao, C.; Min, J.; Wang, F. Association of Levels of Physical Activity With Risk of Parkinson Disease. JAMA Netw. Open 2018, 1, e182421. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  32. Spielman, L.J.; Gibson, D.L.; Klegeris, A. Unhealthy gut, unhealthy brain: The role of the intestinal microbiota in neurodegenerative diseases. Neurochem. Int. 2018, 120, 149–163. [Google Scholar] [CrossRef] [PubMed]
  33. Uyar, G.Ö.; Yildiran, H. A nutritional approach to microbiota in Parkinson’s disease. Biosci. Microbiota Food Health 2019, 38, 115–127. [Google Scholar] [CrossRef] [Green Version]
  34. Doyle, P.; Brown, A.; Beral, V.; Reeves, G.; Green, J. Incidence of and risk factors for Motor Neurone Disease in UK women: A prospective study. BMC Neurol. 2012, 12, 25. [Google Scholar] [CrossRef] [Green Version]
  35. Gallo, V.; Vineis, P.; Cancellieri, M.; Chiodini, P.; Barker, R.A.; Brayne, C.; Pearce, N.; Vermeulen, R.; Panico, S.; Bueno-De-Mesquita, B.; et al. Exploring causality of the association between smoking and Parkinson’s disease. Int. J. Epidemiol. 2018, 48, 912–925. [Google Scholar] [CrossRef]
  36. Pan, B.; Jin, X.; Jun, L.; Qiu, S.; Zheng, Q.; Pan, M. The relationship between smoking and stroke. Medicine 2019, 98, e14872. [Google Scholar] [CrossRef]
  37. Nelson, M.E.; Jester, D.J.; Petkus, A.J.; Andel, R. Cognitive Reserve, Alzheimer’s Neuropathology, and Risk of Dementia: A Systematic Review and Meta-Analysis. Neuropsychol. Rev. 2021, 1–18. [Google Scholar] [CrossRef]
  38. Booth, J.; Connelly, L.; Lawrence, M.; Chalmers, C.; Joice, S.; Becker, C.; Dougall, N. Evidence of perceived psychosocial stress as a risk factor for stroke in adults: A meta-analysis. BMC Neurol. 2015, 15, 233. [Google Scholar] [CrossRef] [Green Version]
  39. Stuart, K.E.; Padgett, C. A Systematic Review of the Association Between Psychological Stress and Dementia Risk in Humans. J. Alzheimer’s Dis. 2020, 78, 335–352. [Google Scholar] [CrossRef] [PubMed]
  40. Kimbrough, A.M.; Guadagno, R.E.; Muscanell, N.L.; Dill, J. Gender differences in mediated communication: Women connect more than do men. Comput. Hum. Behav. 2013, 29, 896–900. [Google Scholar] [CrossRef]
  41. Lavorgna, L.; Russo, A.; De Stefano, M.; Lanzillo, R.; Esposito, S.; Moshtari, F.; Rullani, F.; Piscopo, K.; Buonanno, D.; Morra, V.B.; et al. Health-Related Coping and Social Interaction in People with Multiple Sclerosis Supported by a Social Network: Pilot Study With a New Methodological Approach. Interact. J. Med Res. 2017, 6, e10. [Google Scholar] [CrossRef] [Green Version]
  42. Kuźma, E.; Lourida, I.; Moore, S.F.; Levine, D.A.; Ukoumunne, O.C.; Llewellyn, D.J. Stroke and dementia risk: A systematic review and meta-analysis. Alzheimer’s Dement. 2018, 14, 1416–1426. [Google Scholar] [CrossRef] [Green Version]
  43. Attems, J.; Jellinger, K.A. The overlap between vascular disease and Alzheimer’s disease—Lessons from pathology. BMC Med. 2014, 12, 206. [Google Scholar] [CrossRef] [PubMed] [Green Version]
Table 1. Single Source Questionnaire (SSQ) variable inclusions for lifestyle behaviours and food and beverage categories.
Table 1. Single Source Questionnaire (SSQ) variable inclusions for lifestyle behaviours and food and beverage categories.
LifestyleSSQ Variables Queried as Done in the Last 3 Months
(Used in Last 4 Weeks, Communication Apps)
Cognitive engagementWent to a short course/seminar/convention/public lecture; read a novel; read a non-fiction book; used a computer at home; used a computer at work or school; played a musical instrument or sung in a choir; worked on a car; dressmaking
Physical activityDid some formal exercise; played a sport
SmokerCurrent
Social face-to-faceVisited friends/relatives; entertained friends/relatives; held a dinner party
Social onlineFacebook Messenger, Skype, Viber, WeChat, WhatsApp, teleconference, telephone
Stress reductionHobbies
FoodSSQ Variables Queried as Consumed in the Last 7 days
Bakery/cerealRolls/bread, porridge, cereals (biscuit, other), toast, bagels
DairyMilk (from drinks: white, UHT, flavoured, breakfast), yoghurt (natural, flavoured, drinking), cheese (natural, dip), dairy desserts, ice cream (single, tub)
Fish/seafoodFish, other seafood
Fruit/vegetablesFresh, canned, frozen, dried
MeatChicken, beef, veal, lamb/mutton, pork, turkey, duck, rabbit, ham/bacon, other cold meats, other meats
Natural grainsRice, pasta/spaghetti, noodles
SnacksPastries, muffins/doughnuts, croissants, biscuits (all), chips, muesli bars, breakfast bars, chocolate (all), lollies/mints/gum, frozen desserts, other snacks
BeverageSSQ Variables Queried as Consumed in the Last 7 days
AlcoholBeer, wine, cider, spirits
Soft drinksCola, lemonade, lemon, orange, other soft drinks (diet and regular), mixers.
Tea/coffeeTea, coffee (hot and cold)
Table 2. Characteristics of single source survey non-responders and responders.
Table 2. Characteristics of single source survey non-responders and responders.
CharacteristicNon-ResponderResponderPR
(N = 345,236)(N = 192,091)(95% CI)
Sex
Male180.2k (68.7%)82.0k (31.3%)1.00
Female165.0k (60.0%)110.1k (40.0%)1.28 (1.27, 1.29)
Age, years
18–39131.9k (75.8%)42.2k (24.2%)1.00
40–59111.2k (62.2%)67.5k (37.8%)1.56 (1.54, 1.57)
≥60102.1k (55.3%)82.4k (44.7%)1.84 (1.83, 1.86)
Country of birth
Australia/NZ251.0k (62.3%)151.8k (37.7%)1.00
Europe40.4k (61.6%)25.2k (38.4%)1.02 (1.01, 1.03)
Asia31.0k (79.5%)8.0k (20.5%)0.54 (0.53, 0.55)
Other22.9k (76.4%)7.0k (23.6%)0.63 (0.61, 0.64)
University education
No217.3k (63.0%)127.6k (37.0%)1.00
Yes127.9k (66.5%)64.5k (33.5%)0.91 (0.90, 0.91)
Employment status
Employed205.7k (68.3%)95.6k (31.7%)1.00
Unemployed29.9k (66.8%)14.8k (33.2%)1.05 (1.03, 1.06)
Student/Home Duties29.5k (66.0%)15.2k (34.1%)1.07 (1.06, 1.09)
Retired80.2k (54.7%)66.5k (45.3%)1.42 (1.42, 1.44)
Income, AUD
0–19,999114.3k (62.2%)69.5k (37.8%)1.00
20,000–39,99986.4k (62.3%)52.4k (37.7%)1.00 (0.99, 1.01)
40,000–89,999103.9k (66.1%)53.3k (33.9%)0.90 (0.89, 0.91)
≥90,00040.4k (70.5%)16.9k (29.5%)0.78 (0.77, 0.79)
(Missing)(202; 80.5%)(49; 19.5%)n/a
Remoteness
Capital city209.7k (66.2%)106.9k (33.8%)1.00
Regional135.6k (61.4%)85.2k (38.6%)1.14 (1.13, 1.15)
Partnered
No146.9k (67.3%)71.4k (32.7%)1.00
Yes198.3k (62.2%)120.7k (37.8%)1.16 (1.15, 1.17)
Lives with others
No69.5k (62.0%)42.6k (38.0%)1.00
Yes272.5k (64.8%)147.8k (35.2%)0.93 (0.92, 0.93)
(Missing)(3.3k; 66.1%)(1.7k; 34.0%)n/a
Alcohol consumption, past 7 days
No144.7k (64.6%)79.4k (35.4%)1.00
Yes200.6k (64.0%)112.7k (36.0%)1.02 (1.01, 1.02)
Current smoker
No271.8k (62.6%)162.2k (37.4%)1.00
Yes73.4k (71.1%)29.9k (28.9%)0.77 (0.77, 0.78)
Sample sizes were in the unit of thousands (k). Analysis performed using log-binomial regression models. Shown in bold, PR < 0.50 and >1.50 were used as thresholds for material difference between non-responders and responders.
Table 3. Characteristics of neurological disorders referenced to comparator population.
Table 3. Characteristics of neurological disorders referenced to comparator population.
CharacteristicADMNDMSPDStroke
(N = 125)(N = 72)(N = 441)(N = 415)(N = 647)
PR95%CIPR95%CIPR95%CIPR95%CIPR95%CI
Sex
MenRef Ref Ref Ref Ref
Women0.48(0.33,0.69)1.03(0.65,1.64)2.56(2.04,3.20)0.59(0.48,0.71)0.56(0.48,0.66)
P<0.001P=0.91P<0.001P<0.001P<0.001
Age
18–39Ref Ref Ref Ref Ref
40–590.70(0.30,1.60)0.70(0.33,1.51)2.61(1.97,3.46)7.09(2.55,19.73)5.54(3.25,9.43)
≥604.58(2.43,8.62)1.93(1.05,3.55)1.26(0.93,1.72)44.79(16.62,120.68)14.69(8.78,24.58)
PTREND<0.001PTREND=0.034PTREND=0.14PTREND<0.001PTREND<0.001
BMI
Under/normalRef Ref Ref Ref Ref
Overweight1.03(0.67,1.59)1.49(0.84,2.64)0.97(0.77,1.23)1.06(0.84,1.34)0.93(0.76,1.13)
Obese1.01(0.63,1.62)1.07(0.56,2.02)1.08(0.85,1.36)0.96(0.74,1.24)1.29(1.06,1.57)
PTREND=0.97PTREND=0.79PTREND=0.55PTREND=0.77PTREND=0.011
Country of birth
Australia/NZRef Ref Ref Ref Ref
Europe1.04(0.65,1.67)1.77(0.99,3.15)1.18(0.90,1.53)0.81(0.62,1.06)0.94(0.76,1.17)
Asia3.75(1.93,7.30)1.31(0.37,4.56)0.18(0.06,0.55)0.51(0.19,1.37)1.47(0.91,2.35)
Other1.61(0.67,3.91)2.32(0.89,6.07)0.42(0.20,0.88)0.75(0.39,1.46)1.14(0.73,1.79)
PTREND=0.017PTREND=0.031PTREND=0.002PTREND=0.063PTREND=0.47
Religion
NoRef Ref Ref Ref Ref
Yes1.34(0.85,2.11)0.67(0.41,1.09)0.83(0.67,1.01)1.13(0.89,1.42)1.03(0.86,1.23)
P=0.21P=0.11P=0.065P=0.32P=0.77
University education
NoRef Ref Ref Ref Ref
Yes0.61(0.40,0.95)1.28(0.80,2.05)1.19(0.97,1.45)0.91(0.72,1.14)0.64(0.52,0.78)
P=0.027P=0.30P=0.088P=0.40P<0.001
Employment status
EmployedRef Ref Ref Ref Ref
Unemployed3.89(1.82,8.29)2.70(1.13,6.44)2.86(2.17,3.78)2.93(1.83,4.69)4.46(3.25,6.12)
Student/home duties2.30(0.81,6.48)2.52(1.00,6.33)1.36(0.95,1.95)0.66(0.24,1.85)3.41(2.26,5.15)
Retired3.23(1.78,5.84)2.69(1.19,6.07)3.18(2.26,4.48)3.03(2.14,4.29)4.13(3.09,5.52)
PTREND<0.001PTREND=0.009PTREND<0.001PTREND<0.001PTREND<0.001
Income, AUD
0–19,999Ref Ref Ref Ref Ref
20,000–39,9990.72(0.48,1.08)1.32(0.79,2.22)0.85(0.67,1.06)0.96(0.77,1.19)0.67(0.56,0.80)
40,000–89,9990.37(0.21,0.66)0.58(0.29,1.16)0.60(0.46,0.79)0.65(0.48,0.87)0.34(0.26,0.43)
>–90,0000.17(0.04,0.68)0.30(0.07,1.28)0.57(0.37,0.87)0.32(0.17,0.62)0.21(0.12,0.35)
PTREND<0.001PTREND=0.040PTREND<0.001PTREND<0.001PTREND<0.001
Remoteness
Capital cityRef Ref Ref Ref Ref
Regional0.88(0.62,1.24)0.83(0.51,1.33)1.06(0.87,1.28)1.07(0.88,1.29)1.03(0.88,1.20)
P=0.46P=0.43P=0.58P=0.52P=0.70
Partnered
NoRef Ref Ref Ref Ref
Yes0.89(0.61,1.30)0.50(0.31,0.81)1.00(0.82,1.22)0.90(0.73,1.11)0.62(0.53,0.73)
P=0.55P=0.005P=0.98P=0.34P<0.001
Lives with others
NoRef Ref Ref Ref Ref
Yes0.90(0.60,1.35)0.43(0.26,0.71)0.89(0.71,1.13)0.89(0.71,1.11)0.68(0.57,0.81)
P=0.62P=0.001P=0.36P=0.32P<0.001
Analysis performed using log-binomial regression, adjusted for age, sex and education. Results in boldface denote statistical significance (p < 0.05). Abbreviations: AD = Alzheimer’s disease; BMI = body mass index; MND = motor neuron disease; MS = multiple sclerosis; PD = Parkinson’s disease; Ref: reference category; SES = socioeconomic status.
Table 4. Associations between lifestyle behaviours and neurological disorders referenced to comparator population.
Table 4. Associations between lifestyle behaviours and neurological disorders referenced to comparator population.
Lifestyle BehaviourADMNDMSPDStroke
(N = 125)(N = 72)(N = 441)(N = 415)(N = 647)
PR(95%CI)PR(95%CI)PR(95%CI)PR(95%CI)PR(95%CI)
Cognitive engagement
NoRef Ref Ref Ref Ref
Yes0.48(0.33,0.69)1.03(0.59,1.80)0.99(0.78,1.26)0.83(0.67,1.02)0.45(0.38,0.53)
P<0.001P =0.91P =0.94P =0.077P<0.001
Physical activity
NoRef Ref Ref Ref Ref
Yes0.50(0.33,0.76)0.61(0.38,0.96)0.72(0.59,0.87)0.83(0.68,1.01)0.69(0.58,0.81)
P=0.001P=0.034P<0.001P =0.064P<0.001
Smoker
NoRef Ref Ref Ref Ref
Yes1.07(0.62,1.82)2.14(1.21,3.77)1.13(0.88,1.46)0.57(0.39,0.84)1.49(1.22,1.83)
P=0.82P=0.008P=0.34P=0.005P<0.001
Social face-to-face
NoRef Ref Ref Ref Ref
Yes0.38(0.26,0.57)1.10(0.53,2.30)1.10(0.79,1.52)0.93(0.71,1.21)0.45(0.37,0.53)
P<0.001P=0.80P=0.57P=0.58P<0.001
Social online
NoRef Ref Ref Ref Ref
Yes0.36(0.11,1.16)1.39(0.66,2.91)1.68(1.29,2.19)1.07(0.73,1.58)0.74(0.51,1.06)
P=0.088P=0.39P<0.001P=0.73P=0.10
Stress reduction
NoRef Ref Ref Ref Ref
Yes0.62(0.40,0.99)1.07(0.65,1.78)1.22(1.00,1.48)0.88(0.70,1.10)0.76(0.63,0.92)
P=0.043P=0.78P=0.048P=0.25P=0.004
Analysis performed using log-binomial regression, adjusted for age, sex and education. Results in boldface denote statistical significance (p < 0.05). Abbreviations: AD = Alzheimer’s disease; MND = motor neuron disease; MS = multiple sclerosis; PD = Parkinson’s disease; Ref: reference category.
Table 5. Associations between food and beverage consumption and neurological disorders, referenced to the comparator population.
Table 5. Associations between food and beverage consumption and neurological disorders, referenced to the comparator population.
Food & Beverage ADMNDMSPDStroke
(N = 125)(N = 72)(N = 441)(N = 415)(N = 647)
PR(95%CI)PR(95%CI)PR(95%CI)PR(95%CI)PR(95%CI)
Food consumed last 7 days
Bakery/cereals
NoRef Ref Ref Ref Ref
Yes0.45(0.30,0.66)1.83(0.79,4.25)0.96(0.74,1.25)0.85(0.65,1.11)0.60(0.49,0.72)
P<0.001P=0.16P=0.75P=0.22P<0.001
Dairy
NoRef Ref Ref Ref Ref
Yes0.48(0.29,0.77)1.53(0.55,4.25)0.97(0.69,1.37)0.78(0.57,1.08)0.52(0.42,0.65)
P=0.002P=0.41P=0.86P=0.14P<0.001
Fish/seafood
NoRef Ref Ref Ref Ref
Yes0.69(0.48,0.98)0.97(0.60,1.57)0.87(0.72,1.06)1.05(0.85,1.30)0.70(0.60,0.82)
P=0.041P=0.92P=0.17P=0.64P<0.001
Fruit
NoRef Ref Ref Ref Ref
Yes0.54(0.36,0.79)1.46(0.72,2.97)1.13(0.87,1.47)0.78(0.62,0.99)0.61(0.51,0.72)
P=0.002P=0.29P=0.36P=0.044P<0.001
Fruit ≥ 2 serve/day
NoRef Ref Ref Ref Ref
Yes1.04(0.66,1.62)1.00(0.57,1.76)1.20(0.96,1.51)1.21(0.97,1.52)0.79(0.64,0.98)
P=0.87P=0.99P=0.11P=0.096P=0.029
Vegetables
NoRef Ref Ref Ref Ref
Yes0.41(0.27,0.62)1.22(0.56,2.67)1.42(1.00,2.02)0.71(0.55,0.92)0.56(0.46,0.68)
P<0.001P=0.62P=0.048P=0.011P<0.001
Veg ≥ 5 serve/day
NoRef Ref Ref Ref Ref
Yes1.22(0.59,2.49)0.94(0.34,2.57)1.21(0.83,1.78)1.23(0.84,1.80)1.29(0.95,1.75)
P=0.59P=0.90P=0.32P=0.28P=0.11
Meat
NoRef Ref Ref Ref Ref
Yes0.39(0.24,0.61)1.51(0.55,4.13)0.90(0.65,1.25)0.66(0.48,0.91)0.58(0.46,0.74)
P<0.001P=0.42P=0.53P=0.010P<0.001
Natural grains
NoRef Ref Ref Ref Ref
Yes0.51(0.35,0.75)1.24(0.69,2.23)1.08(0.85,1.36)0.81(0.66,1.00)0.72(0.61,0.85)
P<0.001P=0.47P=0.53P=0.047P<0.001
Snacks
NoRef Ref Ref Ref Ref
Yes0.51(0.33,0.77)0.98(0.49,1.95)0.93(0.70,1.25)0.70(0.55,0.91)0.53(0.44,0.64)
P=0.002P=0.95P=0.64P=0.006P<0.001
Beverages consumed past 7 days
Alcohol
NoRef Ref Ref Ref Ref
Yes0.61(0.43,0.89)1.27(0.78,2.06)0.86(0.71,1.04)0.67(0.55,0.82)0.49(0.42,0.58)
P=0.009P=0.34P=0.11P<0.001P<0.001
Soft drinks
NoRef Ref Ref Ref Ref
Yes0.92(0.62,1.39)0.99(0.61,1.62)0.74(0.61,0.90)1.02(0.83,1.25)1.10(0.93,1.31)
P=0.70P=0.97P=0.003P=0.88P=0.26
Tea/coffee
NoRef Ref Ref Ref Ref
Yes0.53(0.35,0.81)1.34(0.68,2.66)0.82(0.64,1.04)0.80(0.62,1.02)0.67(0.55,0.82)
P=0.004P=0.40P=0.10P=0.074P<0.001
Analysis performed using log-binomial regression, adjusted for age, sex and education. Results in boldface denote statistical significance (p < 0.05). Abbreviations: AD = Alzheimer’s disease; MND =motor neuron disease; MS = multiple sclerosis; PD = Parkinson’s disease; Ref: reference category.
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Nag, N.; Lin, X.; Yu, M.; Simpson-Yap, S.; Jelinek, G.A.; Neate, S.L.; Levin, M. Assessing Lifestyle Behaviours of People Living with Neurological Conditions: A Panoramic View of Community Dwelling Australians from 2007–2018. J. Pers. Med. 2021, 11, 144. https://doi.org/10.3390/jpm11020144

AMA Style

Nag N, Lin X, Yu M, Simpson-Yap S, Jelinek GA, Neate SL, Levin M. Assessing Lifestyle Behaviours of People Living with Neurological Conditions: A Panoramic View of Community Dwelling Australians from 2007–2018. Journal of Personalized Medicine. 2021; 11(2):144. https://doi.org/10.3390/jpm11020144

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Nag, Nupur, Xin Lin, Maggie Yu, Steve Simpson-Yap, George A. Jelinek, Sandra L. Neate, and Michele Levin. 2021. "Assessing Lifestyle Behaviours of People Living with Neurological Conditions: A Panoramic View of Community Dwelling Australians from 2007–2018" Journal of Personalized Medicine 11, no. 2: 144. https://doi.org/10.3390/jpm11020144

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