Abstract

Owing to increasing medical expenses, researchers have attempted to detect clinical signs and preventive measures of diseases using electronic health record (EHR). In particular, time-series EHRs collected by periodic medical check-up enable us to clarify the relevance among check-up results and individual environmental factors such as lifestyle. However, usually such time-series data have many missing observations and some results are strongly correlated to each other. These problems make the analysis difficult and there exists strong demand to detect clinical findings beyond them. We focus on blood test values in medical check-up results and apply a time-series analysis methodology using a state space model. It can infer the internal medical states emerged in blood test values and handle missing observations. The estimated models enable us to predict one’s blood test values under specified condition and predict the effect of intervention, such as changes of body composition and lifestyle. We use time-series data of EHRs periodically collected in the Hirosaki cohort study in Japan and elucidate the effect of 17 environmental factors to 38 blood test values in elderly people. Using the estimated model, we then simulate and compare time-transitions of participant’s blood test values under several lifestyle scenarios. It visualizes the impact of lifestyle changes for the prevention of diseases. Finally, we exemplify that prediction errors under participant’s actual lifestyle can be partially explained by genetic variations, and some of their effects have not been investigated by traditional association studies.

Highlights

  • The continuously increasing cost of medical care has received significant attention

  • The center of the idea aimed at curbing this trend is using electronic health records (EHRs) to detect signs and preventive measures of diseases such as diabetes

  • We focus on blood test values in EHRs and inference of the effect to blood test values by the changes of body composition values such as Body Mass Index (BMI), lifestyle, and social status

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Summary

Introduction

The continuously increasing cost of medical care has received significant attention. The center of the idea aimed at curbing this trend is using electronic health records (EHRs) to detect signs and preventive measures of diseases such as diabetes. EHRs consist of patient’s medical information, e.g., demographics, symptoms, and blood test values. Prediction of blood test values under different lifestyle scenarios

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