A Scoping Review of the Use of Machine Learning in Health Economics and Outcomes Research: Part 2-Data From Nonwearables

被引:4
|
作者
Lee, Woojung [1 ,3 ]
Schwartz, Naomi [1 ]
Bansal, Aasthaa [1 ]
Khor, Sara [1 ]
Hammarlund, Noah [2 ]
Basu, Anirban [1 ]
Devine, Beth [1 ]
机构
[1] Univ Washington, Comparat Hlth Outcomes Policy & Econ CHOICE Inst, Sch Pharm, Seattle, WA USA
[2] Univ Florida, Dept Hlth Serv Res Management & Policy, Gainesville, FL USA
[3] Univ Washington, Choice Inst, Dept Pharm, Box 357630, Seattle, WA 98195 USA
关键词
health data; health economics; machine learning; nonwearable data; outcomes research; PREDICT MORTALITY; RISK-FACTORS; READMISSION; VALIDATION; ALGORITHM; REHABILITATION; COMPLICATIONS; IMPROVEMENTS; DISCHARGE; TRAUMA;
D O I
10.1016/j.jval.2022.07.011
中图分类号
F [经济];
学科分类号
02 ;
摘要
Objectives: Despite the increasing interest in applying machine learning (ML) methods in health economics and outcomes research (HEOR), stakeholders face uncertainties in when and how ML can be used. We reviewed the recent applications of ML in HEOR.Methods: We searched PubMed for studies published between January 2020 and March 2021 and randomly chose 20% of the identified studies for the sake of manageability. Studies that were in HEOR and applied an ML technique were included. Studies related to wearable devices were excluded. We abstracted information on the ML applications, data types, and ML methods and analyzed it using descriptive statistics.Results: We retrieved 805 articles, of which 161 (20%) were randomly chosen. Ninety-two of the random sample met the eligibility criteria. We found that ML was primarily used for predicting future events (86%) rather than current events (14%). The most common response variables were clinical events or disease incidence (42%) and treatment outcomes (22%). ML was less used to predict economic outcomes such as health resource utilization (16%) or costs (3%). Although electronic medical records (35%) were frequently used for model development, claims data were used less frequently (9%). Tree-based methods (eg, random forests and boosting) were the most commonly used ML methods (31%).Conclusions: The use of ML techniques in HEOR is growing rapidly, but there remain opportunities to apply them to predict economic outcomes, especially using claims databases, which could inform the development of cost-effectiveness models.
引用
收藏
页码:2053 / 2061
页数:9
相关论文
共 28 条
  • [21] Machine Learning–Enabled NIR Spectroscopy. Part 2: Workflow for Selecting a Subset of Samples from Publicly Accessible Data
    Hussain Ali
    Prakash Muthudoss
    Manikandan Ramalingam
    Lakshmi Kanakaraj
    Amrit Paudel
    Gobi Ramasamy
    AAPS PharmSciTech, 24
  • [22] mHealth Systems Need a Privacy-by-Design Approach: Commentary on "Federated Machine Learning, Privacy-Enhancing Technologies, and Data Protection Laws in Medical Research: Scoping Review"
    Tewari, Ambuj
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2023, 25
  • [23] Machine Learning-Enabled NIR Spectroscopy. Part 2: Workflow for Selecting a Subset of Samples from Publicly Accessible Data
    Ali, Hussain
    Muthudoss, Prakash
    Ramalingam, Manikandan
    Kanakaraj, Lakshmi
    Paudel, Amrit
    Ramasamy, Gobi
    AAPS PHARMSCITECH, 2023, 24 (01)
  • [24] Models and measures of learning outcomes for non-technical skills in simulation-based medical education: Findings from an integrated scoping review of research and content analysis of curricular learning objectives
    Hofmann, Riikka
    Curran, Sara
    Dickens, Siobhan
    STUDIES IN EDUCATIONAL EVALUATION, 2021, 71
  • [25] Natural language processing with machine learning methods to analyze unstructured patient-reported outcomes derived from electronic health records: A systematic review
    Sim, Jin-ah
    Huang, Xiaolei
    Horan, Madeline R.
    Stewart, Christopher M.
    Robison, Leslie L.
    Hudson, Melissa M.
    Baker, Justin N.
    Huang, I-Chan
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2023, 146
  • [26] Use of Temporally Validated Machine Learning Models To Predict Outcomes of Percutaneous Nephrolithotomy Using Data from the British Association of Urological Surgeons Percutaneous Nephrolithotomy Audit
    Geraghty, Robert M.
    Thakur, Anshul
    Howles, Sarah
    Finch, William
    Fowler, Sarah
    Rogers, Alistair
    Sriprasad, Seshadri
    Smith, Daron
    Dickinson, Andrew
    Gall, Zara
    Somani, Bhaskar K.
    EUROPEAN UROLOGY FOCUS, 2024, 10 (02): : 290 - 297
  • [27] Insights Derived From Text-Based Digital Media, in Relation to Mental Health and Suicide Prevention, Using Data Analysis and Machine Learning: Systematic Review
    Sweeney, Colm
    Ennis, Edel
    Mulvenna, Maurice D.
    Bond, Raymond
    O'Neill, Siobhan
    JMIR MENTAL HEALTH, 2024, 11
  • [28] Achieving Good Metabolic Control Without Weight Gain with the Systematic Use of GLP-1-RAs and SGLT-2 Inhibitors in Type 2 Diabetes: A Machine-learning Projection Using Data from Clinical Practice
    Giorda, Carlo Bruno
    Rossi, Antonio
    Baccetti, Fabio
    Zilich, Rita
    Romeo, Francesco
    Besmir, Nreu
    Di Cianni, Graziano
    Guaita, Giacomo
    Morviducci, Lelio
    Muselli, Marco
    Ozzello, Alessandro
    Pisani, Federico
    Ponzani, Paola
    Santin, Pierluigi
    Verda, Damiano
    Musacchio, Nicoletta
    CLINICAL THERAPEUTICS, 2023, 45 (08) : 754 - 761