Learning Hidden Patterns from Patient Multivariate Time Series Data Using Convolutional Neural Networks: A Case Study of Healthcare Cost Prediction
Mohammad Amin Morid, Olivia R. Liu Sheng, Kensaku Kawamoto, Samir, Abdelrahman

TL;DR
This study develops a CNN-based method to automatically learn hidden temporal patterns from multivariate time series data in patient insurance claims, significantly improving healthcare cost prediction accuracy.
Contribution
Introduces a novel CNN architecture tailored for healthcare multivariate time series data, outperforming traditional pattern detection methods in cost prediction.
Findings
CNN architecture with customized kernels improves prediction accuracy
Temporal patterns from medical, visit, and cost data are highly predictive
Considering three-month data windows yields optimal results
Abstract
Objective: To develop an effective and scalable individual-level patient cost prediction method by automatically learning hidden temporal patterns from multivariate time series data in patient insurance claims using a convolutional neural network (CNN) architecture. Methods: We used three years of medical and pharmacy claims data from 2013 to 2016 from a healthcare insurer, where data from the first two years were used to build the model to predict costs in the third year. The data consisted of the multivariate time series of cost, visit and medical features that were shaped as images of patients' health status (i.e., matrices with time windows on one dimension and the medical, visit and cost features on the other dimension). Patients' multivariate time series images were given to a CNN method with a proposed architecture. After hyper-parameter tuning, the proposed architecture…
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Taxonomy
MethodsConvolution
