TY - JOUR
T1 - Enhancing healthcare decision support through explainable AI models for risk prediction
AU - Niu, Shuai
AU - Yin, Qing
AU - Ma, Jing
AU - Song, Yunya
AU - Xu, Yida
AU - Bai, Liang
AU - Pan, Wei
AU - Yang, Xian
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/6
Y1 - 2024/6
N2 - Electronic health records (EHRs) are a valuable source of information that can aid in understanding a patient's health condition and making informed healthcare decisions. However, modelling longitudinal EHRs with heterogeneous information is a challenging task. Although recurrent neural networks (RNNs) are frequently utilized in artificial intelligence (AI) models for capturing longitudinal data, their explanatory capabilities are limited. Predictive clustering stands as the most recent advancement within this domain, offering interpretable indications at the cluster level for predicting disease risk. Nonetheless, the challenge of determining the optimal number of clusters has put a brake on the widespread application of predictive clustering for disease risk prediction. In this paper, we introduce a novel non-parametric predictive clustering-based risk prediction model that integrates the Dirichlet Process Mixture Model (DPMM) with predictive clustering via neural networks. To enhance the model's interpretability, we integrate attention mechanisms that enable the capture of local-level evidence in addition to the cluster-level evidence provided by predictive clustering. The outcome of this research is the development of a multi-level explainable artificial intelligence (AI) model. We evaluated the proposed model on two real-world datasets and demonstrated its effectiveness in capturing longitudinal EHR information for disease risk prediction. Moreover, the model successfully produced interpretable evidence to bolster its predictions.
AB - Electronic health records (EHRs) are a valuable source of information that can aid in understanding a patient's health condition and making informed healthcare decisions. However, modelling longitudinal EHRs with heterogeneous information is a challenging task. Although recurrent neural networks (RNNs) are frequently utilized in artificial intelligence (AI) models for capturing longitudinal data, their explanatory capabilities are limited. Predictive clustering stands as the most recent advancement within this domain, offering interpretable indications at the cluster level for predicting disease risk. Nonetheless, the challenge of determining the optimal number of clusters has put a brake on the widespread application of predictive clustering for disease risk prediction. In this paper, we introduce a novel non-parametric predictive clustering-based risk prediction model that integrates the Dirichlet Process Mixture Model (DPMM) with predictive clustering via neural networks. To enhance the model's interpretability, we integrate attention mechanisms that enable the capture of local-level evidence in addition to the cluster-level evidence provided by predictive clustering. The outcome of this research is the development of a multi-level explainable artificial intelligence (AI) model. We evaluated the proposed model on two real-world datasets and demonstrated its effectiveness in capturing longitudinal EHR information for disease risk prediction. Moreover, the model successfully produced interpretable evidence to bolster its predictions.
KW - Deep neural networks
KW - Disease risk prediction
KW - Explainable AI in healthcare
KW - Healthcare decision support
KW - Modelling longitudinal patient data
UR - http://www.scopus.com/inward/record.url?scp=85191022164&partnerID=8YFLogxK
UR - https://www.sciencedirect.com/science/article/pii/S0167923624000617?via%3Dihub
U2 - 10.1016/j.dss.2024.114228
DO - 10.1016/j.dss.2024.114228
M3 - Journal article
AN - SCOPUS:85191022164
SN - 0167-9236
VL - 181
JO - Decision Support Systems
JF - Decision Support Systems
M1 - 114228
ER -