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Study the Impact of the CommunityRx Program on Health, Self-care and Cost

2022년 5월 9일 업데이트: University of Chicago

Evaluating CommunityRx, a Self-Care Innovation for Older Adults, Using Agent-Based Modeling: Collecting and Analyzing Data to Build the Agent Based Model

CommunityRx is a health information technology-based innovation that, starting with the patient-health care provider encounter, facilitates self-care coordination for patients, caregivers, and providers. The CommunityRx database interfaces with electronic medical records to provide patients with a "HealtheRx." A HealtheRx is a list of community-based self-care resources tailored to the patients health needs (e.g., a person with diabetes receives information about podiatrists, nutrition classes, and other resources need to manage diabetes). CommunityRx aims to measurably improve health and health care while reducing health care costs especially in underserved health care settings. Specifically, the proposed research aims to 1) evaluate the impact of CommunityRx on health care utilization, cost, health, and patient-centered outcomes for program participants compared to controls; 2) examine the flow and spread of information to and through primary agents including: program participants, community health information experts, healthcare providers, and community-based service providers (businesses and organizations providing self-care resources); and 3) build and use an agent-based model to test the distributed impact, including economic effects, of CommunityRx system adoption on the demonstration area and predict performance over time by conducting experiments that vary assumptions about agent, environment, and population-level characteristics.

연구 개요

상태

완전한

정황

개입 / 치료

상세 설명

CommunityRx connects health care to self-care. CommunityRx begins with the medical encounter and functions like an e-prescribing system, modeled after medication e-prescribing.9 Rather than sending a medication prescription to the patient's pharmacy, a HealtheRx "prescription" is automatically generated at the point of care, delivered to the patient in paper (or electronic) form and stored in the Electronic Medical Record (EMR) for future reference. The HealtheRx is ontologically-generated, driven by standard demographic (eg. age, gender, address, language) data fields in the EMR and customized to patient problems/diagnoses like "homelessness," or "obesity." Like e-prescribing medicine, CommunityRx involves prescribing, fulfillment (patient signs up for a Weight Watchers class), and administration (patient participates in the weight loss program) (Fig. 2).10 The HealtheRx prescription is the primary information agent in the system, driven by simple ontologic rules that generate complexity, including iteration of the CommunityRx system itself, as human agents interact with the self-care information.

CommunityRx can be best understood as part of a complex adaptive system. The HealtheRx, in contrast to a drug prescription, is designed specifically to enhance the interpersonal aspect of the patient-physician encounter, informing both agents about self-care resources. A patient receives a HealtheRx and then contacts a Community Health Information Specialist (CHIS) or not. She seeks self-care resources or not.

Data captured by the CommunityRx system about patient referrals and needs are distributed to community-based service providers (CBSPs) in the form of quarterly reports delivered to CBSP contacts cultivated by CHIS. These data efficiently reveal to CBSPs real-time needs and gaps in self-care resources. The investigators hypothesize these data will be used by CBSPs over time to ensure supply. Youth who generate community resource data through employment with MAPSCorps also gain insight to community resources and engage with CBSP personnel and CHIS as they gather their data. Youth spread information to their networks about community resources and increase their use of these resources. MAPSCorps data about community resources are shared publicly (www.healtherx.org, www.southsidehealth.org, www.dondeesta.org). Self-care becomes more efficient. Supply meets demand. Patients and providers have more time and resources to devote to other salubrious activities and CBSPs become stronger. Over time, transparency in the market for self-care resources increases competition and quality.

This hypothetical dynamic is an example of emergent self-organization from a complex adaptive system. The intervention starts with a simple encounter, governed by simple rules, between patient and health care provider. As the number of these encounters grow, previously siloed sectors - health care and self-care - evolve a new kind of formation that is far more efficient for the community than the current state. CommunityRx drives this new formation through multiple agents who are unaware of the complexity they are producing: "…the self-organized structure simply emerges as a result of each individual doing their own thing, independently." In evaluating the economic effects of CommunityRx adoption, agent-based modeling (ABM) can test how close the attractor state, or end-point in a CommunityRx system configuration (set of assumed behaviors and designed interventions), comes to a Pareto efficient point of equilibrium. The effects of the CommunityRx intervention are non-linear, involve interactions and feedback loops, and therefore require a complex system modeling approach for evaluation.

A. Purpose or Hypothesis

Data inputs for agent based modeling (ABM) can come from a range of sources, including empirical quantitative and qualitative data, data from the literature, and expert opinion. Because CommunityRx targets people of all ages (0-99 yrs, to date), a prospective, experimental, community-based design (eg. RCT) to assess outcomes by age strata would be very informative about patient agents (the investigators expect age-group differences in behavior, social networks, and outcomes) but cost-prohibitive. ABM can accommodate assumptions made based on this important, but specific, population subgroup (or "testbed"), includes many agents, and allows for multiple simulations to assess the impact of variations in those assumptions for the much larger and more diverse population that the system-wide model includes. A cost-effectiveness analysis is needed to understand the true economic impact of CommunityRx on the total cost of the burden of disease. In addition, the research team brings clinical and research expertise and specialized interest in middle-age and older adult populations with chronic disease. Focusing on this subgroup builds on this track record and will meaningfully extend our contributions to the gerontology and geriatrics fields.

Specifically, the aims (and associated hypotheses) of this research include:

Aim 1. Evaluate the impact of CommunityRx on health care utilization, cost, health, and patient-centered outcomes for program participants (patients who receive care at the clinical demonstration sites and live in an 16 zip code area) compared to controls (patients who receive health care at the demonstration sites, but live outside the 16 zip code area), with a special focus on middle-age and older adults.

Aim 1a. Evaluate the impact of CommunityRx on health care utilization, health care costs, and on health outcomes for program participants (patients who receive care at the clinical demonstration sites and live in an 16 zip code area) compared to controls (patients who receive health care at the demonstration sites, but live outside the 11 zip code area) of all ages. NOTE: This aim is funded separately and registered on clinicaltrials.gov separately (see ID 1C1CMS330997).

Hypothesis: CommunityRx will decrease emergency/inpatient care utilization, decrease percent per beneficiary per year (%PBPY) costs and improve health.

Aim 1b. Evaluate the impact of the CommunityRx system on patient-centered outcomes in a randomized control trail of 200 program participants ages 45-74 and compared to 200 controls.

Hypothesis: CommunityRx will be associated with clinically meaningful improvements in: a) self-care behavior; b) perceived care quality; and c) quality of life.

Aim 1c. Characterize the economic value of care augmented with the CommunityRx system compared to usual care, based on the prospective participant-control study described in Aim 1b.

Hypothesis: Compared to usual care, care augmented with the CommunityRx system will be as cost-effective as commonly accepted medical devices and treatments.

Aim 2. Examine the flow and spread of information to and through primary agents including: program participants, community health information specialists, healthcare providers, and community-based service providers (businesses and organizations providing self-care resources).

Hypotheses: 1) Among the CBSPs receiving high volumes of CommunityRx referrals for people ≥45 years old (>1000/year), CommunityRx will produce a self-reported increase in: a) knowledge of community resources especially for older adults, b) referrals to other CBSPs, c) older client volume, and d) aging-related goods/services /programs inventory; and 2) Delivery of the CommunityRx intervention at the point of medical care produces knowledge about self-care resources in the community that spreads to secondary agents including members of patient and provider social networks.

Aim 3. Build and use an agent-based model to test the distributed impact, including economic effects, of CommunityRx adoption on the demonstration area and predict performance over time by conducting experiments that vary assumptions about agent, environment, and population-level characteristics.

Hypotheses: 1) The system-level value of CommunityRx is greater than the value quantified as %PBPY health care utilization savings and is projected to increase with population aging; 2) Experiments run on a systems-based model will predict and quantify the impact of strategies to optimize CommunityRx performance for improvements, sustainability, and spread to other settings; and 3) Systems-Based Modeling is an effective and efficient tool for large-scale evaluation of a health information technology-based intervention to improve health and health care.

연구 유형

중재적

등록 (실제)

411

단계

  • 해당 없음

연락처 및 위치

이 섹션에서는 연구를 수행하는 사람들의 연락처 정보와 이 연구가 수행되는 장소에 대한 정보를 제공합니다.

연구 장소

    • Illinois
      • Chicago, Illinois, 미국, 60637
        • University of Chicago Medicine - Adult Emergency Department and Primary Care Group clinic

참여기준

연구원은 적격성 기준이라는 특정 설명에 맞는 사람을 찾습니다. 이러한 기준의 몇 가지 예는 개인의 일반적인 건강 상태 또는 이전 치료입니다.

자격 기준

공부할 수 있는 나이

45년 (성인, 고령자)

건강한 자원 봉사자를 받아들입니다

아니

연구 대상 성별

모두

설명

Inclusion Criteria:

  • 45-74 years old
  • Medicaid and/or Medicare beneficiary
  • Living in 1 of the 16 zip codes served by CommunityRx
  • Seen at University of Chicago primary care or emergency department

Exclusion Criteria:

  • Recollection of previous receipt of a HealtheRx

공부 계획

이 섹션에서는 연구 설계 방법과 연구가 측정하는 내용을 포함하여 연구 계획에 대한 세부 정보를 제공합니다.

연구는 어떻게 설계됩니까?

디자인 세부사항

  • 주 목적: 다른
  • 할당: 무작위화되지 않음
  • 중재 모델: 병렬 할당
  • 마스킹: 없음(오픈 라벨)

무기와 개입

참가자 그룹 / 팔
개입 / 치료
간섭 없음: Control arm
The control group will receive usual care, no HealtheRx.
실험적: Intervention arm
The intervention arm will receive the intervention, a HealtheRx, which includes a list of resources in their community tailored to their health needs.
The HealtheRx is an informational intervention. The HealtheRx is generated and administered at the point of care. It includes a list of community resources, tailored to a patient's needs based on diagnoses, that are located near the patient's home. A health care provider and/or administrative staff administers and reviews the HealtheRx with the patient.

연구는 무엇을 측정합니까?

주요 결과 측정

결과 측정
측정값 설명
기간
Mental Health-related Quality of Life at 3 Months
기간: Assessed at Baseline, 1 Week, 1 Month and 3 Months; score at 3 months reported
Health-related quality of life will be measured using the Short Form Health Survey (SF-12) . Minimum value=0, maximum value=100. Higher scores equal better mental health.
Assessed at Baseline, 1 Week, 1 Month and 3 Months; score at 3 months reported

2차 결과 측정

결과 측정
측정값 설명
기간
Change From Baseline in Cost Effectiveness at 3 Months
기간: Baseline, 3 months
Using claims data and self-reported data on heath care utilization, we will use data from intervention baseline and at 3 months following the intervention to assess the cost effectiveness of HealtheRx.
Baseline, 3 months
Patient Satisfaction at 3 Months
기간: Assessed at baseline, 1 week, 1 month and 3 months; 3 months reported here
Patient satisfaction will be measures using the domain of general satisfaction from the Patient Satisfaction Questionnaire (PSQ-18)
Assessed at baseline, 1 week, 1 month and 3 months; 3 months reported here
Physical Health-related Quality of Life at 3 Months
기간: Assessed at baseline, 1 week, 1 month and 3 months; 3 months reported
Health-related quality of life will be measured using the Short Form-12 (SF-12). Minimum value=0, maximum value=100. Higher scores equal better physical health.
Assessed at baseline, 1 week, 1 month and 3 months; 3 months reported
Self-efficacy - Finding Places and Services in Community to Manage Health as Measured by Questionnaire
기간: Assessed at baseline, 1 week, 1 month and 3 months; score at 3 months reported
Measure confidence in ability to find services to take care of health
Assessed at baseline, 1 week, 1 month and 3 months; score at 3 months reported

기타 결과 측정

결과 측정
측정값 설명
기간
Access to Resources - Weight Loss Class or Support Group as Measured by Questionnaire Developed for This Study
기간: Baseline, 1 week, 1 month and 3 months
Measure perceived and self-reported access to weight loss classes or support groups
Baseline, 1 week, 1 month and 3 months
Access to Resources - Healthy Eating Classes as Measured by Questionnaire Developed for This Study
기간: Baseline, 1 week, 1 month and 3 months
Measure perceived and self-reported access to health eating classes
Baseline, 1 week, 1 month and 3 months
Access to Resources - Counseling as Measured by Questionnaire Developed for This Study
기간: Baseline, 1 week, 1 month and 3 months
Measure perceived and self-reported access to counseling
Baseline, 1 week, 1 month and 3 months
Access to Resources - Smoking Cessation Classes as Measured by Questionnaire Developed for This Study
기간: Baseline, 1 week, 1 month and 3 months
Measure perceived and self-reported access to smoking cessation classes
Baseline, 1 week, 1 month and 3 months
Access to Resources - Stress Management Classes as Measured by Questionnaire Developed for This Study
기간: Baseline, 1 week, 1 month and 3 months
Measure perceived and self-reported access to stress management classes
Baseline, 1 week, 1 month and 3 months
Access to Resources - Rent/Mortgage as Measured by Questionnaire Developed for This Study
기간: Baseline, 1 week, 1 month and 3 months
Measure perceived and self-reported access to help paying rent or mortgage
Baseline, 1 week, 1 month and 3 months
Self-efficacy - Smoking Cessation as Measured by Questionnaire Based on Healthy People 20/20 and Applies Likert Scale
기간: Baseline, 1 week, 1 month and 3 months
Measure confidence in ability to quit smoking
Baseline, 1 week, 1 month and 3 months
Self-efficacy - Weight as Measured by Questionnaire Based on Healthy People 20/20 and Applies Likert Scale
기간: Baseline, 1 week, 1 month and 3 months
Measure confidence in ability to manage weight
Baseline, 1 week, 1 month and 3 months
Self-efficacy - Eating Healthy as Measured by Questionnaire Based on Healthy People 20/20 and Applies Likert Scale
기간: Baseline, 1 week, 1 month and 3 months
Measure confidence in ability to eat healthy
Baseline, 1 week, 1 month and 3 months
Self-efficacy - Exercise as Measured by Questionnaire Based on Healthy People 20/20 and Applies Likert Scale
기간: Baseline, 1 week, 1 month and 3 months
Measure confidence in ability to exercise
Baseline, 1 week, 1 month and 3 months

공동 작업자 및 조사자

여기에서 이 연구와 관련된 사람과 조직을 찾을 수 있습니다.

수사관

  • 수석 연구원: Stacy T Lindau, MD, MAPP, University of Chicago

간행물 및 유용한 링크

연구에 대한 정보 입력을 담당하는 사람이 자발적으로 이러한 간행물을 제공합니다. 이것은 연구와 관련된 모든 것에 관한 것일 수 있습니다.

연구 기록 날짜

이 날짜는 ClinicalTrials.gov에 대한 연구 기록 및 요약 결과 제출의 진행 상황을 추적합니다. 연구 기록 및 보고된 결과는 공개 웹사이트에 게시되기 전에 특정 품질 관리 기준을 충족하는지 확인하기 위해 국립 의학 도서관(NLM)에서 검토합니다.

연구 주요 날짜

연구 시작 (실제)

2015년 12월 1일

기본 완료 (실제)

2016년 12월 1일

연구 완료 (실제)

2017년 12월 1일

연구 등록 날짜

최초 제출

2015년 4월 17일

QC 기준을 충족하는 최초 제출

2015년 4월 30일

처음 게시됨 (추정)

2015년 5월 6일

연구 기록 업데이트

마지막 업데이트 게시됨 (실제)

2022년 5월 11일

QC 기준을 충족하는 마지막 업데이트 제출

2022년 5월 9일

마지막으로 확인됨

2022년 5월 1일

추가 정보

이 연구와 관련된 용어

이 정보는 변경 없이 clinicaltrials.gov 웹사이트에서 직접 가져온 것입니다. 귀하의 연구 세부 정보를 변경, 제거 또는 업데이트하도록 요청하는 경우 register@clinicaltrials.gov. 문의하십시오. 변경 사항이 clinicaltrials.gov에 구현되는 즉시 저희 웹사이트에도 자동으로 업데이트됩니다. .

건강 행동에 대한 임상 시험

HealtheRx에 대한 임상 시험

구독하다