Falconer Erin, El-Hay Tal, Alevras Dimitris, Docherty John P, Yanover Chen, Kalton Alan, Goldschmidt Yaara, Rosen-Zvi Michal
ODH, Inc., 508 Carnegie Center, Princeton, NJ, 08540, USA.
IBM Research, IBM R&D Labs in Israel, Haifa University Campus, Mount Carmel, Haifa, 3498825, Israel.
Health Justice. 2017 Dec;5(1):4. doi: 10.1186/s40352-017-0049-y. Epub 2017 Mar 22.
Patients with a serious mental illness often receive care that is fragmented due to reduced availability of or access to resources, and inadequate, discontinuous, and uncoordinated care across health, social services, and criminal justice organizations. This article describes the creation of a multisystem analysis that derives insights from an integrated dataset including patient access to case management services, medical services, and interactions with the criminal justice system.
Data were combined from electronic systems within a US mental health ecosystem that included mental health and substance abuse services, as well as data from the criminal justice system. Cox models were applied to test the associations between delivery of services and re-incarceration. Additionally, machine learning was used to train and validate a predictive model to examine effects of non-modifiable risk factors (age, past arrests, mental health diagnosis) and modifiable risk factors (outpatient, medical and case management services, and use of a jail diversion program) on re-arrest outcome.
An association was found between past arrests and admission to crisis stabilization services in this population (N = 10,307). Delivery of case management or medical services provided after release from jail was associated with a reduced risk for re-arrest. Predictive models linked non-modifiable and modifiable risk factors and outcomes and predicted the probability of re-arrests with fair accuracy (area under the receiver operating characteristic curve of 0.67).
By modeling the complex interactions between risk factors, service delivery, and outcomes, systems of care might be better enabled to meet patient needs and improve outcomes.
患有严重精神疾病的患者往往因资源可用性降低或获取资源困难,以及卫生、社会服务和刑事司法组织之间的护理不足、不连续和不协调而接受碎片化的护理。本文描述了一种多系统分析的创建过程,该分析从一个综合数据集中得出见解,该数据集包括患者获得病例管理服务、医疗服务以及与刑事司法系统的互动情况。
数据来自美国精神卫生生态系统中的电子系统,包括精神卫生和药物滥用服务,以及刑事司法系统的数据。应用Cox模型来检验服务提供与再次入狱之间的关联。此外,使用机器学习来训练和验证一个预测模型,以检查不可改变的风险因素(年龄、过去的逮捕记录、精神卫生诊断)和可改变的风险因素(门诊、医疗和病例管理服务,以及使用监狱转介计划)对再次被捕结果的影响。
在该人群(N = 10307)中,发现过去的逮捕记录与进入危机稳定服务机构之间存在关联。出狱后提供病例管理或医疗服务与再次被捕的风险降低有关。预测模型将不可改变和可改变的风险因素与结果联系起来,并以相当高的准确性预测了再次被捕的概率(受试者操作特征曲线下面积为0.67)。
通过对风险因素、服务提供和结果之间的复杂相互作用进行建模,护理系统可能能够更好地满足患者需求并改善结果。