Your browser doesn't support javascript.
loading
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.
Affiliation
  • Bozkurt S; Department of Medicine, Stanford University, Stanford, California, USA.
  • Cahan EM; Department of Medicine, Stanford University, Stanford, California, USA.
  • Seneviratne MG; NYU School of Medicine, New York, New York, USA.
  • Sun R; Department of Medicine, Stanford University, Stanford, California, USA.
  • Lossio-Ventura JA; Department of Medicine, Stanford University, Stanford, California, USA.
  • Ioannidis JPA; Department of Medicine, Stanford University, Stanford, California, USA.
  • Hernandez-Boussard T; Department of Medicine, Stanford University, Stanford, California, USA.
J Am Med Inform Assoc ; 27(12): 1878-1884, 2020 12 09.
Article in En | MEDLINE | ID: mdl-32935131
ABSTRACT

OBJECTIVE:

The development of machine learning (ML) algorithms to address a variety of issues faced in clinical practice has increased rapidly. However, questions have arisen regarding biases in their development that can affect their applicability in specific populations. We sought to evaluate whether studies developing ML models from electronic health record (EHR) data report sufficient demographic data on the study populations to demonstrate representativeness and reproducibility. MATERIALS AND

METHODS:

We searched PubMed for articles applying ML models to improve clinical decision-making using EHR data. We limited our search to papers published between 2015 and 2019.

RESULTS:

Across the 164 studies reviewed, demographic variables were inconsistently reported and/or included as model inputs. Race/ethnicity was not reported in 64%; gender and age were not reported in 24% and 21% of studies, respectively. Socioeconomic status of the population was not reported in 92% of studies. Studies that mentioned these variables often did not report if they were included as model inputs. Few models (12%) were validated using external populations. Few studies (17%) open-sourced their code. Populations in the ML studies include higher proportions of White and Black yet fewer Hispanic subjects compared to the general US population.

DISCUSSION:

The demographic characteristics of study populations are poorly reported in the ML literature based on EHR data. Demographic representativeness in training data and model transparency is necessary to ensure that ML models are deployed in an equitable and reproducible manner. Wider adoption of reporting guidelines is warranted to improve representativeness and reproducibility.
Subject(s)
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Demography / Electronic Health Records / Machine Learning Type of study: Guideline / Prognostic_studies / Qualitative_research Aspects: Determinantes_sociais_saude / Equity_inequality Limits: Female / Humans / Male Language: En Journal: J Am Med Inform Assoc Journal subject: INFORMATICA MEDICA Year: 2020 Document type: Article Affiliation country: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Demography / Electronic Health Records / Machine Learning Type of study: Guideline / Prognostic_studies / Qualitative_research Aspects: Determinantes_sociais_saude / Equity_inequality Limits: Female / Humans / Male Language: En Journal: J Am Med Inform Assoc Journal subject: INFORMATICA MEDICA Year: 2020 Document type: Article Affiliation country: United States