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Comparison of Healthcare Resource Utilization Between Patients Who Engaged or Did Not Engage With a Prescription Digital Therapeutic for Opioid Use Disorder

Authors Velez FF, Colman S, Kauffman L, Ruetsch C , Anastassopoulos K , Maricich YA

Received 20 August 2021

Accepted for publication 15 October 2021

Published 29 October 2021 Volume 2021:13 Pages 909—916

DOI https://doi.org/10.2147/CEOR.S334274

Checked for plagiarism Yes

Review by Single anonymous peer review

Peer reviewer comments 3

Editor who approved publication: Professor Giorgio Colombo



Fulton F Velez,1 Sam Colman,2 Laura Kauffman,2 Charles Ruetsch,3 Kathryn Anastassopoulos,2 Yuri A Maricich1

1Pear Therapeutics, Inc., Boston, MA, USA; 2Covance Market Access, Gaithersburg, MD, USA; 3Health Analytics, Columbia, MD, USA

Correspondence: Fulton F Velez
Pear Therapeutics, Inc., 200 State St., Floor 13, Boston, MA, 02109, USA
Email [email protected]

Background: A prescription digital therapeutic (PDT) (reSET-O®) may expand access to behavioral treatment for patients with opioid use disorder (OUD) treated with buprenorphine, but long-term data on effectiveness are lacking.
Objective: To compare real-world healthcare resource utilization (HCRU) among patients who engaged with reSET-O and buprenorphine compared to similar patients in recovery treated with buprenorphine who did not fill their reSET-O script or engage with the PDT beyond week one.
Methods: A retrospective analysis of facility and clinical service claims data was conducted in adults with PDT initiation and between 12 weeks and 9 months of continuous enrollment in a health plan after initiation. Patients who filled their prescription and engaged with the therapeutic were compared to patients who filled the prescription but did not engage beyond week one (NE), and patients who did not fill the prescription (NR) (the latter two groups combined into one group hereafter referred to as “non-engagers”). Comparisons were analyzed using a repeated-measures negative binomial model of encounters/procedures, adjusted for number of days in each period. Associated cost trends assessed using current Medicare reimbursement rates.
Results: A total of 444 patients redeemed a prescription and engaged with the PDT (mean age 37.5 years, 63.1% female, 84% Medicaid), and 64 patients did not engage with the PDT (mean age 39.5 years, 32.8% female, 73.4% Medicaid). Total cost of hospital facility encounters was $2693 for engaged patients vs $6130 for non-engaged patients. Engaged patients had somewhat higher rates of certain clinician services. Total facility and clinician services costs for engaged vs non-engaged patients were $8733 vs $11,441, for a net cost savings over 9 months of $2708 per patient who engaged with reSET-O.
Conclusion: Patients who engaged with an OUD-specific PDT had a net cost reduction for inpatient and outpatient services of $2708 per patient over 9 months compared to patients who did not engage with the PDT, despite similar levels of buprenorphine adherence.

Keywords: community reinforcement approach, contingency management, healthcare resource utilization, opioid use disorder, OUD, prescription digital therapeutic, PDT, reSET-O

Plain Language Summary

Treating patients with opioid use disorder (OUD) reduces healthcare expenditures, yet roughly 80% of patients do not receive needed treatment. Prescription digital therapeutics (PDTs) are software-based treatments FDA-authorized to improve clinical outcomes for diseases and conditions. The reSET-O® PDT was approved in 2018 to help patients with OUD being concurrently treated with buprenorphine engage in treatment and reduce substance use, but to date there has been no long-term, real-world evaluation of how use of the PDT affects healthcare resource utilization (HCRU) patterns.

This study evaluated real-world use of healthcare resources in patients who engaged with reSET-O vs a control arm comprised of patients who were prescribed the PDT but who did not redeem their script (NR) or did not engage (NE) beyond week one (both groups of patients were being treated concurrently with buprenorphine). 444 patients redeemed a prescription and engaged with the therapeutic, and there were 64 patients in the NR+NE group. Total cost of hospital facility encounters was $2693 for engaged patients vs $6130 for NR+NE patients. Engaged patients had somewhat higher rates of certain clinician services such as psychiatry services, case management, evaluation and management services, and pathology/drug testing. Total facility and clinician services costs for engaged vs NR+NE patients were $8733 vs $11,441, for a net cost savings over 9 months of $2708 per patient who engaged with reSET-O.

The results of this study support the value of this PDT in the treatment of a patient population in need of more comprehensive support with recovery.

Introduction

Opioid use disorder (OUD) is a problematic pattern of opioid use with profound impacts on individuals, families, and society at large.1–6 The impact on direct healthcare costs in the US continues to grow and is currently estimated at approximately $90 billion annually, which is primarily due to costs associated with hospital and emergency department (ED) encounters.3,7,8 The use of healthcare resources by patients with OUD may be increasing recently due to the COVID-19 pandemic, which has increased social isolation and has shifted care patterns to a range of remote or virtual modes.9,10 Opioid-related mortality rose sharply in the early months of the COVID-19 outbreak to its highest-ever recorded levels of daily deaths, exceeding 160 deaths/day in May 2020.11

Medications for opioid use disorder (MOUD) (ie, buprenorphine, methadone, or naltrexone), along with behavioral therapies and social supports are the preferred approaches for treating OUD.12,13 Buprenorphine, an opioid agonist that reduces withdrawal symptoms and cravings, has been shown to reduce the use of expensive healthcare services such as inpatient hospital stays and ED visits as well as lowering the total cost of care.7,12–18 MOUD has also been shown to reduce the risk of opioid overdose and to improve patient-centered outcomes such as mental health, employment, and residence in stable housing situations.12,14 Unfortunately, fewer than 20% of patients receive such treatment,19 patients face significant barriers to accessing MOUD,20 and fewer than 10% of patients receive adequate behavioral support, which contribute to reported high treatment dropout rates within 90 days (between 30% and 50%), and may limit the effectiveness of MOUD and long-term recovery.21–23 As a result, a need exists to scale up the availability and provision of behavioral treatment and reduce waitlist times, a major reason for the call by the National Institute on Drug Abuse for development of digital versions of cognitive-behavioral therapy for addiction disorders.24

reSET-O® was authorized by the FDA in 2018 for patients with OUD being treated with buprenorphine. It is an 84-day (12-week) prescription digital therapeutic (PDT)25 that delivers an OUD-specific form of cognitive behavioral therapy (CBT) based on the community reinforcement approach (CRA). On-demand lessons delivered on smartphones or tablets via text, pre-recorded video, and audio increase patients’ self-efficacy in avoiding illicit substances, and help to increase their ability to live a productive life free from opioids. Content retention and mastery is reinforced by fluency training (a series of simple repetitive quizzes at the end of each lesson) and by contingency management (eligibility for positive reinforcement messages or monetary digital gift cards) for engagement with lessons, up to 4 per week and for negative urine drug screens) (Figure 1).

Figure 1 Example of patient and clinician interfaces for reSET-O PDT.

In the clinical trials that formed the basis of FDA approval, 82% of OUD patients who received treatment with the PDT were retained in treatment vs 68% of patients receiving only treatment as usual (TAU) (P = 0.018), and the likelihood of abstinence during weeks 9–12 was 77.3% vs 62.1%, respectively (P = 0.011).25

The current study seeks to evaluate real-world differences in healthcare resource utilization (HCRU) between patients who engaged, and patients who did not engage with the PDT over a period of 9 months following PDT treatment initiation.

Methods

This study was a real-world, retrospective analysis of facility and clinical service encounters in adults with OUD in treatment with buprenorphine MOUD (Figure 2).

Figure 2 Study design.

Patient Population

The population analyzed was comprised of: 1) patients who received a prescription for reSET-O from a licensed clinician as part of their substance use disorder treatment (ie, these were patients treated in usual care settings, not recruited or otherwise incentivized to participate in a study), 2) had claims data available for analysis (as detailed below), and 3) had continuous enrollment in the medical/pharmacy plan for between 12 weeks and 9-month post-index period. Upon prescription, the PDT was activated (at no cost to the patient) and a claim was then submitted to the patient’s health insurer. Patients were grouped by level of engagement with the PDT: patients who redeemed their prescription and engaged with the therapeutic after week 1 of PDT activation (engaged patients) vs patients who either redeemed the prescription but did not engage after week 1 or patients who did not redeem the prescription (non-engaged patients). The patients in both groups received concurrent buprenorphine therapy. No other exclusion/inclusion criteria were applied in order to maintain a broad sample of patients treated in usual care settings and who were considered by a treating clinician to be similarly suitable for a PDT prescription.

Data Source

Medical and pharmacy claims from the HealthVerity PrivateSource20 (PS20) database between January 2019 and February 2020 (study period) were the source of data for this study. The PS20 database includes medical and pharmacy claims for about 70 million commercial, 60 million Medicaid, and 15 million Medicare enrollees distributed across 150 payers since 2015. This study received a waiver of authorization for the use and disclosure of protected health information (PHI) and a determination of exempt status under 45 CFR § 46.104(d)(4) from the Western Institutional Review Board on April 2, 2020.

Study Measures

Patient demographics including age, sex, and payer type were analyzed. Post-index period claims were aggregated as facility claims or clinical service claims to organize patients’ use of healthcare resources. Facility encounters included all-cause inpatient stays, and use of intensive care unit (ICU), emergency department (ED), partial hospitalizations (PH), and surgical outpatient department (SOD) facilities. Assessed clinical service encounters included all-cause Current Procedure Terminology (CPT) codes identified from clinician claims such as evaluation and management codes, medical codes (eg, cardiovascular, psychiatry, neurology), pathology and laboratory, and rehabilitative services. Adherence to buprenorphine was analyzed using the medication possession ratio (MPR) on filled prescriptions in the post-index period for the engaged and non-engaged cohorts.

Analyses

Healthcare costs were calculated by applying Medicare costs to the incidence rate observed for the different healthcare resource utilization categories. This provides an accurate, albeit conservative, estimate of healthcare costs borne by the system.26 Cost differences between engaged and non-engaged patients were calculated. MPR was calculated as the total days’ supply of buprenorphine within the post-index period divided by the total number of days in the post-index period.27

Results

Patient Demographic and Clinical Characteristics

444 patients redeemed a prescription for reSET-O and engaged with the therapeutic (mean age 37.5 years, 63.1% female, 84% Medicaid), and 64 patients either did not redeem their prescription or redeemed the prescription but did not engage with the therapeutic (mean age 39.5 years, 32.8% female, 73.4% Medicaid). Evidence of claims for buprenorphine in the 9-month pre-index period was available for 78% of engaged patients (345 of 444) vs 67% of non-engaged patients (43 of 64). In the 9-month pre-index period the per-patient rate of psychiatric consultations was 9.11 in engaged patients vs 5.14 in non-engaged patients.

Facility Encounters Comparison

The incidence rate for unique hospital encounters in the 9-month post-index period was 0.723 for engaged patients vs 1.102 for non-engaged patients, with the largest differences observed for inpatient stays (engaged: 0.139 vs non-engaged: 0.256), ICU stays (0.024 vs 0.054), and partial hospitalizations (0.025 vs 0.288). Detailed results are shown in Table 1.

Table 1 Incidence Rates for Hospital Encounters in 9-Month Post-Index Period

Clinical Service Encounters Comparison

Engaged patients had somewhat higher rates of certain clinician services such as psychiatry services, case management, evaluation and management services, and pathology/drug testing. Detailed results are shown in Table 2.

Table 2 Incidence Rates for Physician Services in 9-Month Post-Index Period

Total Cost Comparison

Total cost of facility encounters was $2693 for engaged patients vs $6130 for non-engaged patients, while total per-patient cost for clinician services was $6040 for engaged patients vs $5311 for non-engaged patients (Table 3). The lower facility encounter costs among engaged patients outweighed their slightly greater clinician services costs vs non-engaged patients resulting in lower overall costs of $8733 for engaged vs $11,441 for non-engaged patients, for an overall cost reduction of $2708 per patient over 9 months for engaged patients.

Table 3 Cost Comparisons, Engaged vs Non-Engaged Patients

Buprenorphine Adherence Patterns

Adherence to buprenorphine therapy rose among engaged patients (pre-index mean MPR = 0.69; post-index mean MPR = 0.80, P < 0.0001) as well as among the non-engaged patients although the pre/post difference among non-engagers did not reach statistical significance (pre-index mean MPR = 0.62; post-index mean MPR = 0.79; P = 0.0597).

Discussion

This real-world claims data analysis of patients with OUD on buprenorphine MOUD who either did, or did not, engage with a PDT showed substantially lower incidence rates of hospital encounters among engaged patients compared to non-engaged patients, especially in inpatient stays and ICU stays. There were somewhat higher rates of certain physician services among the engaged patients, for example for case management services, evaluation and management outpatient services, neurology and neuromuscular procedures, psychiatry services, and drug testing. In the case of psychiatric consultations, the rate was comparable to that observed in the pre-index period for engaged patients, but non-engaged patients had an increase of 22% vs the pre-index period. These higher rates of some physician services observed in patients who engaged with reSET-O, however, were more than offset by lower rates of the more expensive hospital services.

The net cost savings over 9 months of $2708 per patient who engaged with reSET-O that we observed in this evaluation is consistent with previously published evaluations of the economic impacts of reSET-O using modeling approaches, which showed the potential for reSET-O to produce overall reductions in healthcare costs net of product cost.28,29 The present study confirms those observations, as the $2708 cost difference observed between controls and reSET-O patients exceeds the current discounted price of a 12-week prescription for the therapeutic ($1440).

Given that the cost assumptions used in this study are for the most part conservative, a more comprehensive cost analysis incorporating additional cost scenarios, as well as changes in efficiency of care (ie, impact of reduced per-patient face-to-face clinician time through PDT-enabled CBT delivery) should be conducted to determine additional cost impacts.

Recovery and abstinence are long-term goals facilitated by retention in therapy to help reduce excess hospitalizations and ED visits through continued patient reinforcement and the reduction in exposure to opioids and the risk of accidental overdose.

These results are specific to an FDA-authorized PDT and may not be generalizable to a non-FDA-authorized digital therapeutic. FDA authorization is important in ensuring safety, efficacy, and quality of software as a medical device.30–32

Limitations

As with any healthcare claims-based analysis, there are potential limitations and mitigation factors that should be noted. For instance, claims databases are structured for administrative purposes, not research purposes, and may contain coding errors or missing information. Claims databases also do not provide data about severity of disease or about whether specific health conditions are associated with OUD or not (eg, stroke associated with an accidental overdose vs no association with an overdose event), limiting the conclusions that can be drawn about the PDT intervention. The results reported indicate an association between outcomes and exposure to the PDT, not a causal relationship, which will require larger studies that control for confounding. However, claims databases do provide a broad view into the burden to a healthcare system in patients with a particular condition, or undergoing treatment with a specific healthcare technology.

The sample size of the non-engaged patient population was relatively small compared to the engaged patient population, which calls for caution in interpreting these results. Nevertheless, there was evidence of increased adherence to buprenorphine in non-engaged patients that was similar to the engaged patients, and the results are therefore suggestive of the persistent impact of behavioral support provided by an OUD-specific PDT up to nine months post-treatment initiation (or six months following treatment completion).

Some degree of selection bias may be present in these samples as well. For example, it is possible that non-engaged patients may be at an earlier (and thus more vulnerable) phase of their recovery, which could partially explain the higher healthcare utilization observed. This is mitigated by the fact that all the patients in this analysis were prescribed the PDT by their treating clinician, potentially a proxy marker of being at a similar readiness to change stage in the recovery journey, which is further supported by the increased buprenorphine adherence in the non-engaged control arm, to levels comparable to the PDT arm. It should also be noted that non-engaged patients were more likely to be male, although it is not currently known to what extent this might impact the results. Data about the severity of patients’ OUD or their stage of recovery was not available for this analysis; such data would allow a more comprehensive exploration of their impact on healthcare resource utilization patterns alongside intervention with a PDT.

Conclusions

In this real-world observational study of patients prescribed an OUD-specific PDT using concurrent buprenorphine therapy, engagement with the PDT was associated with a net cost reduction for inpatient and outpatient services of $2708 per patient over a 9-month treatment period. The results of this study support the value of this PDT in the treatment of a patient population in need of more comprehensive support with recovery.

Summary

Why carry out this study?

  • Clinical trial data support the efficacy of a prescription digital therapeutic for patients with opioid use disorder (OUD), but real-world healthcare resource utilization (HCRU) data have been lacking.
  • This study of 444 patients with OUD on buprenorphine therapy compared those who engaged with a PDT and those who did not and evaluated HCRU outcomes and associated costs.

What was learned from the study?

  • Total facility and clinician services costs for engaged vs. non-engaged patients were $8,733 vs. $11,441, for a net cost savings over 9 months of $2,708 per patient who engaged with the PDT.
  • The results provide evidence of robust cost reductions with a PDT in the treatment of a patient population in need of more comprehensive support with recovery.

Acknowledgments

The authors would like to thank Stephen Braun for assistance with writing support and critical review of the manuscript. These analyses were funded entirely by Pear Therapeutics, Inc., which developed and markets reSET-O.

Author Contributions

All authors made a significant contribution to the work reported, whether that is in the conception, study design, execution, acquisition of data, analysis and interpretation, or in all these areas; took part in drafting, revising or critically reviewing the article; gave final approval of the version to be published; have agreed on the journal to which the article has been submitted; and agree to be accountable for all aspects of the work.

Disclosure

Dr Velez and Dr Maricich are employees of Pear Therapeutics and have no additional conflicts of interest to disclose. Ms Kauffman reports personal fees from Pear Therapeutics, Inc., during the conduct of the study. Dr Ruetsch reports personal fees from Pear Therapeutics and Indivior, outside the submitted work. Ms Anastassopoulos is an employee of Labcorp which was contracted to conduct the study. The authors report no other conflicts of interest in this work.

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