Prediction and diagnosis of depression using machine learning with electronic health records data: a systematic review

被引:10
|
作者
Nickson, David [1 ]
Meyer, Caroline [2 ]
Walasek, Lukasz [3 ]
Toro, Carla [2 ]
机构
[1] Univ Warwick, WMG, Coventry, England
[2] Univ Warwick, Warwick Med Sch, Coventry, England
[3] Univ Warwick, Dept Psychol, Coventry, England
基金
英国工程与自然科学研究理事会;
关键词
Artificial Intelligence; Depression; Diagnosis; Electronic Health Records; Machine Learning; Prediction; PRIMARY-CARE; CARDIOVASCULAR RISK; FAMILY-HISTORY; ANXIETY; VALIDATION; PHQ-9; DERIVATION; DISORDERS; SEVERITY;
D O I
10.1186/s12911-023-02341-x
中图分类号
R-058 [];
学科分类号
摘要
BackgroundDepression is one of the most significant health conditions in personal, social, and economic impact. The aim of this review is to summarize existing literature in which machine learning methods have been used in combination with Electronic Health Records for prediction of depression.MethodsSystematic literature searches were conducted within arXiv, PubMed, PsycINFO, Science Direct, SCOPUS and Web of Science electronic databases. Searches were restricted to information published after 2010 (from 1st January 2011 onwards) and were updated prior to the final synthesis of data (27th January 2022).ResultsFollowing the PRISMA process, the initial 744 studies were reduced to 19 eligible for detailed evaluation. Data extraction identified machine learning methods used, types of predictors used, the definition of depression, classification performance achieved, sample size, and benchmarks used. Area Under the Curve (AUC) values more than 0.9 were claimed, though the average was around 0.8. Regression methods proved as effective as more developed machine learning techniques.LimitationsThe categorization, definition, and identification of the numbers of predictors used within models was sometimes difficult to establish, Studies were largely Western Educated Industrialised, Rich, Democratic (WEIRD) in demography.ConclusionThis review supports the potential use of machine learning techniques with Electronic Health Records for the prediction of depression. All the selected studies used clinically based, though sometimes broad, definitions of depression as their classification criteria. The reported performance of the studies was comparable to or even better than that found in primary care. There are concerns with generalizability and interpretability.
引用
收藏
页数:38
相关论文
共 50 条
  • [21] Early Prediction of Gestational Diabetes Mellitus Using Electronic Health Records and Machine Learning
    Germaine, Mark A.
    O'Higgins, Amy C.
    Healy, Graham
    Egan, Brendan
    DIABETES, 2024, 73
  • [22] Prediction models using artificial intelligence and longitudinal data from electronic health records: a systematic methodological review
    Carrasco-Ribelles, Lucia A.
    Llanes-Jurado, Jose
    Gallego-Moll, Carlos
    Cabrera-Bean, Margarita
    Monteagudo-Zaragoza, Monica
    Violan, Concepcion
    Zabaleta-del-Olmo, Edurne
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2023, 30 (12) : 2072 - 2082
  • [23] Enhancing the detection of postpartum depression from electronic health records using machine learning algorithms
    Amit, G.
    Girshovitz, I.
    Akiva, P.
    Bar, V.
    Zhang, Y.
    Hermann, A.
    Joly, R.
    Turchioe, M.
    Pathak, J.
    EUROPEAN PSYCHIATRY, 2020, 63 : S26 - S26
  • [24] Disease Prediction Using Graph Machine Learning Based on Electronic Health Data: A Review of Approaches and Trends
    Lu, Haohui
    Uddin, Shahadat
    HEALTHCARE, 2023, 11 (07)
  • [25] Early prediction of clinical deterioration using data-driven machine-learning modeling of electronic health records
    Ruiz, Victor M.
    Goldsmith, Michael P.
    Shi, Lingyun
    Simpao, Allan F.
    Galvez, Jorge A.
    Naim, Maryam Y.
    Nadkarni, Vinay
    Gaynor, J. William
    Tsui, Fuchiang
    JOURNAL OF THORACIC AND CARDIOVASCULAR SURGERY, 2022, 164 (01): : 211 - +
  • [26] Reporting of demographic data and representativeness in machine learning models using electronic health records
    Bozkurt, Selen
    Cahan, Eli M.
    Seneviratne, Martin G.
    Sun, Ran
    Lossio-Ventura, Juan A.
    Ioannidis, John P. A.
    Hernandez-Boussard, Tina
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2020, 27 (12) : 1878 - 1884
  • [27] Opportunities and challenges in developing risk prediction models with electronic health records data: a systematic review
    Goldstein, Benjamin A.
    Navar, Ann Marie
    Pencina, Michael J.
    Ioannidis, John P. A.
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2017, 24 (01) : 198 - 208
  • [28] Prediction of Venous Thromboembolism in Diverse Populations Using Machine Learning and Structured Electronic Health Records
    Chen, Robert
    Petrazzini, Ben Omega
    Malick, Waqas A.
    Rosenson, Robert S.
    Do, Ron
    ARTERIOSCLEROSIS THROMBOSIS AND VASCULAR BIOLOGY, 2024, 44 (02) : 491 - 504
  • [29] Prediction of Endometrial Carcinoma Using the Combination of Electronic Health Records and an Ensemble Machine Learning Method
    Wang, Wenwen
    Xu, Yang
    Yuan, Suzhen
    Li, Zhiying
    Zhu, Xin
    Zhou, Qin
    Shen, Wenfeng
    Wang, Shixuan
    FRONTIERS IN MEDICINE, 2022, 9
  • [30] Dynamic Delirium Prediction in the Intensive Care Unit using Machine Learning on Electronic Health Records
    Contreras, Miguel
    Silva, Brandon
    Shickel, Benjamin
    Bandyopadhyay, Sabyasachi
    Guan, Ziyuan
    Ren, Yuanfang
    Ozrazgat-Baslanti, Tezcan
    Khezeli, Kia
    Bihorac, Azra
    Rashidi, Parisa
    2023 IEEE EMBS INTERNATIONAL CONFERENCE ON BIOMEDICAL AND HEALTH INFORMATICS, BHI, 2023,