| Literature DB >> 30815100 |
Pei-Yun S Hsueh1, Subhro Das1, Chandramouli Maduri1, Karie Kelly2.
Abstract
Recent studies documented the importance of individuality and heterogeneity in care planning. In practice, varying behavioral responses are revealed in patients' care management (CM) records. However, today's care programs are structured around population-level evidence. What if care managers can take advantage of the revealed behavioral response for personalization? The goal of this study is thus to quantify behavioral response from CM records for informing individual-level intervention decisions. We present a Behavioral Response Inference Framework (BRIeF) for understanding differential behavioral responses that are key to effective care planning. We analyze CM records from a healthcare network over a 14-month period and obtain a set of 2,416 intervention-goal attainment records. Promising results demonstrate that the individual-level care planning strategies that are learned from practice by BRIeF, outperform population-level strategies, yielding significantly more accurate intervention recommendations for goal attainment. To our knowledge, this is the first study of learning practice-based evidence from CM records for care planning, suggesting that increased patient behavioral understanding could potentially benefit augmented intelligence for care management decision support.Entities:
Keywords: Care management; augment intelligence; causal inference; metric learning; patient-centered care; personalization
Mesh:
Year: 2018 PMID: 30815100 PMCID: PMC6371321
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076