Application of machine learning in predicting survival outcomes involving real-world data: a scoping review

被引:17
|
作者
Huang, Yinan [1 ]
Li, Jieni [2 ]
Li, Mai [3 ]
Aparasu, Rajender R. [2 ]
机构
[1] Univ Mississippi, Sch Pharm, Dept Pharm Adm, University, MS 38677 USA
[2] Univ Houston, Coll Pharm, Dept Pharmaceut Hlth Outcomes & Policy, Houston, TX 77204 USA
[3] Univ Houston, Dept Ind Engn, Cullen Coll Engn, Houston, TX 77204 USA
关键词
Machine learning; Real-world datasets; Random survival forest; Neural network; MULTIVARIATE DATA-ANALYSIS; MODEL;
D O I
10.1186/s12874-023-02078-1
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundDespite the interest in machine learning (ML) algorithms for analyzing real-world data (RWD) in healthcare, the use of ML in predicting time-to-event data, a common scenario in clinical practice, is less explored. ML models are capable of algorithmically learning from large, complex datasets and can offer advantages in predicting time-to-event data. We reviewed the recent applications of ML for survival analysis using RWD in healthcare.MethodsPUBMED and EMBASE were searched from database inception through March 2023 to identify peer-reviewed English-language studies of ML models for predicting time-to-event outcomes using the RWD. Two reviewers extracted information on the data source, patient population, survival outcome, ML algorithms, and the Area Under the Curve (AUC).ResultsOf 257 citations, 28 publications were included. Random survival forests (N = 16, 57%) and neural networks (N = 11, 39%) were the most popular ML algorithms. There was variability across AUC for these ML models (median 0.789, range 0.6-0.950). ML algorithms were predominately considered for predicting overall survival in oncology (N = 12, 43%). ML survival models were often used to predict disease prognosis or clinical events (N = 27, 96%) in the oncology, while less were used for treatment outcomes (N = 1, 4%).ConclusionsThe ML algorithms, random survival forests and neural networks, are mainly used for RWD to predict survival outcomes such as disease prognosis or clinical events in the oncology. This review shows that more opportunities remain to apply these ML algorithms to inform treatment decision-making in clinical practice. More methodological work is also needed to ensure the utility and applicability of ML models in survival outcomes.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Application of machine learning in predicting survival outcomes involving real-world data: a scoping review
    Yinan Huang
    Jieni Li
    Mai Li
    Rajender R. Aparasu
    BMC Medical Research Methodology, 23
  • [2] Predicting Clinical Remission of Chronic Urticaria Using Random Survival Forests: Machine Learning Applied to Real-World Data
    Irina Pivneva
    Maria-Magdalena Balp
    Yvonne Geissbühler
    Thomas Severin
    Serge Smeets
    James Signorovitch
    Jimmy Royer
    Yawen Liang
    Tom Cornwall
    Jutong Pan
    Andrii Danyliv
    Sarah Jane McKenna
    Alexander M. Marsland
    Weily Soong
    Dermatology and Therapy, 2022, 12 : 2747 - 2763
  • [3] Predicting Clinical Remission of Chronic Urticaria Using Random Survival Forests: Machine Learning Applied to Real-World Data
    Pivneva, Irina
    Balp, Maria-Magdalena
    Geissbuhler, Yvonne
    Severin, Thomas
    Smeets, Serge
    Signorovitch, James
    Royer, Jimmy
    Liang, Yawen
    Cornwall, Tom
    Pan, Jutong
    Danyliv, Andrii
    McKenna, Sarah Jane
    Marsland, Alexander M.
    Soong, Weily
    DERMATOLOGY AND THERAPY, 2022, 12 (12) : 2747 - 2763
  • [4] Towards Machine Learning with Zero Real-World Data
    Kang, Cholmin
    Jung, Hyunwoo
    Lee, Youngki
    WEARSYS'19: PROCEEDINGS OF THE 5TH ACM WORKSHOP ON WEARABLE SYSTEMS AND APPLICATIONS, 2019, : 41 - 46
  • [5] Machine Learning for Emergency Service Optimization: A Real-World Application
    Zhong, Junyi
    Abreu, Thiago
    Heidet, Mathieu
    Lucas, Francoise S.
    Souihi, Sami
    2024 IEEE CANADIAN CONFERENCE ON ELECTRICAL AND COMPUTER ENGINEERING, CCECE 2024, 2024, : 387 - 391
  • [6] Application of machine learning in predicting hospital readmissions: a scoping review of the literature
    Huang, Yinan
    Talwar, Ashna
    Chatterjee, Satabdi
    Aparasu, Rajender R.
    BMC MEDICAL RESEARCH METHODOLOGY, 2021, 21 (01)
  • [7] Application of machine learning in predicting hospital readmissions: a scoping review of the literature
    Yinan Huang
    Ashna Talwar
    Satabdi Chatterjee
    Rajender R. Aparasu
    BMC Medical Research Methodology, 21
  • [8] Real-World Data and Machine Learning to Predict Cardiac Amyloidosis
    Garcia-Garcia, Elena
    Maria Gonzalez-Romero, Gracia
    Martin-Perez, Encarna M.
    Zapata Cornejo, Enrique de Dios
    Escobar-Aguilar, Gema
    Cardenas Bonnet, Marlon Felix
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2021, 18 (03) : 1 - 15
  • [9] Real-World Evidence: Integrating Machine Learning with Real-World Big Data for Predictive Analytics in Healthcare
    Vecchio, Nicolas
    CARDIOLOGY, 2024,
  • [10] Predicting survival benefits of immune checkpoint inhibitor therapy in lung cancer patients: a machine learning approach using real-world data
    Pan, Lingyun
    Mu, Li
    Lei, Haike
    Miao, Siwei
    Hu, Xiaogang
    Tang, Zongwei
    Chen, Wanyi
    Wang, Xiaoxiao
    INTERNATIONAL JOURNAL OF CLINICAL PHARMACY, 2024,