FIT calculator: a multi-risk prediction framework for medical outcomes using cardiorespiratory fitness data

被引:1
|
作者
Elshawi, Radwa [1 ]
Sakr, Sherif [1 ]
Al-Mallah, Mouaz H. [2 ]
Keteyian, Steven J. [3 ]
Brawner, Clinton A. [3 ]
Ehrman, Jonathan K. [3 ]
机构
[1] Univ Tartu, Inst Comp Sci, Tartu, Estonia
[2] Houston Methodist DeBakey Heart & Vasc Ctr, Houston, TX USA
[3] Henry Ford Hosp, Div Cardiovasc Med, 6525 Second Ave, Detroit, MI 48202 USA
关键词
Prediction model; Classification techniques; Interpretability; Automatic algorithm selection; Hyperparameter optimization; ELECTRONIC HEALTH RECORDS; EXPLAINABLE AI; MODELS;
D O I
10.1038/s41598-024-59401-z
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Accurately predicting patients' risk for specific medical outcomes is paramount for effective healthcare management and personalized medicine. While a substantial body of literature addresses the prediction of diverse medical conditions, existing models predominantly focus on singular outcomes, limiting their scope to one disease at a time. However, clinical reality often entails patients concurrently facing multiple health risks across various medical domains. In response to this gap, our study proposes a novel multi-risk framework adept at simultaneous risk prediction for multiple clinical outcomes, including diabetes, mortality, and hypertension. Leveraging a concise set of features extracted from patients' cardiorespiratory fitness data, our framework minimizes computational complexity while maximizing predictive accuracy. Moreover, we integrate a state-of-the-art instance-based interpretability technique into our framework, providing users with comprehensive explanations for each prediction. These explanations afford medical practitioners invaluable insights into the primary health factors influencing individual predictions, fostering greater trust and utility in the underlying prediction models. Our approach thus stands to significantly enhance healthcare decision-making processes, facilitating more targeted interventions and improving patient outcomes in clinical practice. Our prediction framework utilizes an automated machine learning framework, Auto-Weka, to optimize machine learning models and hyper-parameter configurations for the simultaneous prediction of three medical outcomes: diabetes, mortality, and hypertension. Additionally, we employ a local interpretability technique to elucidate predictions generated by our framework. These explanations manifest visually, highlighting key attributes contributing to each instance's prediction for enhanced interpretability. Using automated machine learning techniques, the models simultaneously predict hypertension, mortality, and diabetes risks, utilizing only nine patient features. They achieved an average AUC of 0.90 +/- 0.001 on the hypertension dataset, 0.90 +/- 0.002 on the mortality dataset, and 0.89 +/- 0.001 on the diabetes dataset through tenfold cross-validation. Additionally, the models demonstrated strong performance with an average AUC of 0.89 +/- 0.001 on the hypertension dataset, 0.90 +/- 0.001 on the mortality dataset, and 0.89 +/- 0.001 on the diabetes dataset using bootstrap evaluation with 1000 resamples.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Prediction of Outcomes after Radiotherapy for Hepatocellular Carcinoma Independently Validated Using Multi-Institutional Data
    Chamseddine, I.
    Kim, Y.
    De, B.
    El Naqa, I.
    Wolfgang, J. A.
    Pursley, J.
    Paganetti, H.
    Wo, J. Y.
    Hong, T. S.
    Koay, E. J.
    Grassberger, C.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2021, 111 (03): : E108 - E109
  • [32] Time-Aware Multi-Type Data Fusion Representation Learning Framework for Risk Prediction of Cardiovascular Diseases
    An, Ying
    Tang, Kun
    Wang, Jianxin
    IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2022, 19 (06) : 3725 - 3734
  • [33] PSYCHOSOCIAL, BEHAVIORAL, AND MEDICAL OUTCOMES IN CHILDREN WITH EPILEPSY - A DEVELOPMENTAL RISK FACTOR MODEL USING LONGITUDINAL DATA
    MITCHELL, WG
    SCHEIER, LM
    BAKER, SA
    PEDIATRICS, 1994, 94 (04) : 471 - 477
  • [34] Framework for concealing medical data in images using modified Hill cipher, multi-bit EF and ECDSA
    Sreejith R.
    Senthil S.
    International Journal of Information and Communication Technology, 2021, 19 (02) : 169 - 183
  • [35] Crashing Fault Residence Prediction Using a Hybrid Feature Selection Framework from Multi-Source Data
    Liu, Xiao
    Fang, Xianmei
    Sun, Song
    Gao, Yangchun
    Yang, Dan
    Yan, Meng
    APPLIED SCIENCES-BASEL, 2025, 15 (05):
  • [36] Regressive models for risk prediction of repeated multinomial outcomes: An illustration using Health and Retirement Study data
    Chowdhury, Rafiqul I.
    Islam, Mohammed Ataharul
    BIOMETRICAL JOURNAL, 2020, 62 (04) : 898 - 915
  • [37] SINGLE-SUBJECT PREDICTION OF FUNCTIONAL OUTCOMES IN CLINICAL HIGH RISK SUBJECTS USING CLINICAL DATA
    Rosen, Marlene
    Kaiser, Nathalie
    Haidl, Theresa
    Seves, Mauro
    Schultze-Lutter, Frauke
    Borgwardt, Stefan
    Brambilla, Paolo
    Meisenzahl, Eva
    Pantelis, Christos
    Ruhrmann, Stephan
    Salokangas, Raimo
    Upthegrove, Rachel
    Wood, Stephen
    Koutsouleris, Nikolaos
    SCHIZOPHRENIA BULLETIN, 2018, 44 : S209 - S210
  • [38] Depression and suicide risk prediction models using blood-derived multi-omics data
    Bhak, Youngjune
    Jeong, Hyoung-oh
    Cho, Yun Sung
    Jeon, Sungwon
    Cho, Juok
    Gim, Jeong-An
    Jeon, Yeonsu
    Blazyte, Asta
    Park, Seung Gu
    Kim, Hak-Min
    Shin, Eun-Seok
    Paik, Jong-Woo
    Lee, Hae-Woo
    Kang, Wooyoung
    Kim, Aram
    Kim, Yumi
    Kim, Byung Chul
    Ham, Byung-Joo
    Bhak, Jong
    Lee, Semin
    TRANSLATIONAL PSYCHIATRY, 2019, 9 (1)
  • [39] Depression and suicide risk prediction models using blood-derived multi-omics data
    Youngjune Bhak
    Hyoung-oh Jeong
    Yun Sung Cho
    Sungwon Jeon
    Juok Cho
    Jeong-An Gim
    Yeonsu Jeon
    Asta Blazyte
    Seung Gu Park
    Hak-Min Kim
    Eun-Seok Shin
    Jong-Woo Paik
    Hae-Woo Lee
    Wooyoung Kang
    Aram Kim
    Yumi Kim
    Byung Chul Kim
    Byung-Joo Ham
    Jong Bhak
    Semin Lee
    Translational Psychiatry, 9
  • [40] Prediction of metabolic risk in childhood obesity using machine learning models with multi-omics data
    Torres-Martos, A.
    Anguita-Ruiz, A.
    Bustos-Aibar, M.
    Alcala, R.
    Alcala-Fdez, J.
    Aguilera, C. M.
    ANNALS OF NUTRITION AND METABOLISM, 2022, 78 (SUPPL 3) : 22 - 22