Literature DB >> 28870381

Impact of predicting health-guidance candidates using massive health check-up data: A data-driven analysis.

Daisuke Ichikawa1, Toki Saito2, Hiroshi Oyama3.   

Abstract

INTRODUCTION: Starting in 2008, specific health checkups and health guidance to prevent non-communicable diseases have been provided in Japan, which has the highest proportion of elderly citizens in the world. The attendance rate for health guidance appointments is 17.7%, which is far from the national goal of the system (45%). To improve the attendance rate, we present a model for predicting whether an examinee is a candidate for health guidance; this model was based on a machine learning method and a restricted but massive amount of health checkup information.
MATERIALS AND METHODS: Using machine learning methods, we developed the following five prediction models for identifying health-guidance candidates: baseline: this model included sex and age; model 1: this model included variables that can be measured in person+information on whether the examinee was a candidate in the past year; model 2: model 1+systolic blood pressure+diastolic blood pressure; model 3: model 2+all health checkup results from the past year; and model 4: model 3 using the training dataset excluding cases with missing data.
RESULTS: The performance levels of the five prediction models (the AUC values of the models for the test dataset) were as follows: 0.592 [95% CI: 0.586-0.596] for the baseline model, 0.855 [95% CI: 0.851-0.858] for model 1, 0.985 [95% CI: 0.984-0.985] for model 2, 0.993 [95% CI: 0.993-0.993] for model 3, and 0.943 [95% CI: 0.941-0.945] for model 4.
CONCLUSIONS: We studied five models for identifying health-guidance candidates. The model that used all health checkup results from the past year had the highest predictive power. Application of the prediction model developed in the present study to the selection of health-guidance candidates could reduce the cost of guidance.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Data-driven; Health checkup; Health guidance; Machine learning; Prediction

Mesh:

Year:  2017        PMID: 28870381     DOI: 10.1016/j.ijmedinf.2017.08.002

Source DB:  PubMed          Journal:  Int J Med Inform        ISSN: 1386-5056            Impact factor:   4.046


  3 in total

1.  Data-Driven Forecasting of Agitation for Persons with Dementia: A Deep Learning-Based Approach.

Authors:  SeyyedPooya HekmatiAthar; Hilda Goins; Raymond Samuel; Grace Byfield; Mohd Anwar
Journal:  SN Comput Sci       Date:  2021-06-05

2.  Kanagawa Investigation of the Total Check-up Data from the National database (KITCHEN): protocol for data-driven population-based repeated cross-sectional and 6-year cohort studies.

Authors:  Kei Nakajima; Taizo Iwane; Ryoko Higuchi; Michi Shibata; Kento Takada; Jun Uda; Mami Anan; Michiko Sugiyama; Teiji Nakamura
Journal:  BMJ Open       Date:  2019-02-21       Impact factor: 2.692

3.  Predicting Cardiovascular Risk in Athletes: Resampling Improves Classification Performance.

Authors:  Davide Barbieri; Nitesh Chawla; Luciana Zaccagni; Tonći Grgurinović; Jelena Šarac; Miran Čoklo; Saša Missoni
Journal:  Int J Environ Res Public Health       Date:  2020-10-28       Impact factor: 3.390

  3 in total

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