TY - JOUR
T1 - Healthcare predictive analytics for risk profiling in chronic care
T2 - A Bayesian multitask learning approach
AU - Lin, Yu Kai
AU - Chen, Hsinchun
AU - Brown, Randall A.
AU - Li, Shu Hsing
AU - Yang, Hung Jen
PY - 2017/6
Y1 - 2017/6
N2 - Clinical intelligence about a patient's risk of future adverse health events can support clinical decision making in personalized and preventive care. Healthcare predictive analytics using electronic health records offers a promising direction to address the challenging tasks of risk profiling. Patients with chronic diseases often face risks of not just one, but an array of adverse health events. However, existing risk models typically focus on one specific event and do not predict multiple outcomes. To attain enhanced risk profiling, we adopt the design science paradigm and propose a principled approach called Bayesian multitask learning (BMTL). Considering the model development for an event as a single task, our BMTL approach is to coordinate a set of baseline models-one for each event-and communicate training information across the models. The BMTL approach allows healthcare providers to achieve multifaceted risk profiling and model an arbitrary number of events simultaneously. Our experimental evaluations demonstrate that the BMTL approach attains an improved predictive performance when compared with the alternatives that model multiple events separately. We also find that, in most cases, the BMTL approach significantly outperforms existing multitask learning techniques. More importantly, our analysis shows that the BMTL approach can create significant potential impacts on clinical practice in reducing the failures and delays in preventive interventions. We discuss several implications of this study for health IT, big data and predictive analytics, and design science research.
AB - Clinical intelligence about a patient's risk of future adverse health events can support clinical decision making in personalized and preventive care. Healthcare predictive analytics using electronic health records offers a promising direction to address the challenging tasks of risk profiling. Patients with chronic diseases often face risks of not just one, but an array of adverse health events. However, existing risk models typically focus on one specific event and do not predict multiple outcomes. To attain enhanced risk profiling, we adopt the design science paradigm and propose a principled approach called Bayesian multitask learning (BMTL). Considering the model development for an event as a single task, our BMTL approach is to coordinate a set of baseline models-one for each event-and communicate training information across the models. The BMTL approach allows healthcare providers to achieve multifaceted risk profiling and model an arbitrary number of events simultaneously. Our experimental evaluations demonstrate that the BMTL approach attains an improved predictive performance when compared with the alternatives that model multiple events separately. We also find that, in most cases, the BMTL approach significantly outperforms existing multitask learning techniques. More importantly, our analysis shows that the BMTL approach can create significant potential impacts on clinical practice in reducing the failures and delays in preventive interventions. We discuss several implications of this study for health IT, big data and predictive analytics, and design science research.
KW - Bayesian data analysis
KW - Design science
KW - Electronic health records
KW - Health IT
KW - Healthcare predictive analytics
KW - Multitask learning
UR - http://www.scopus.com/inward/record.url?scp=85019843412&partnerID=8YFLogxK
U2 - 10.25300/MISQ/2017/41.2.07
DO - 10.25300/MISQ/2017/41.2.07
M3 - 文章
AN - SCOPUS:85019843412
SN - 0276-7783
VL - 41
SP - 473
EP - 495
JO - MIS Quarterly: Management Information Systems
JF - MIS Quarterly: Management Information Systems
IS - 2
ER -