Your browser doesn't support javascript.
loading
SynthA1c: Towards Clinically Interpretable Patient Representations for Diabetes Risk Stratification.
Yao, Michael S; Chae, Allison; MacLean, Matthew T; Verma, Anurag; Duda, Jeffrey; Gee, James C; Torigian, Drew A; Rader, Daniel; Kahn, Charles E; Witschey, Walter R; Sagreiya, Hersh.
Afiliação
  • Yao MS; Department of Bioengineering, University of Pennsylvania, Philadelphia 19104, USA.
  • Chae A; Perelman School of Medicine, University of Pennsylvania, Philadelphia 19104, USA.
  • MacLean MT; Perelman School of Medicine, University of Pennsylvania, Philadelphia 19104, USA.
  • Verma A; Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
  • Duda J; Department of Medicine, University of Pennsylvania, Philadelphia, PA 19104, USA.
  • Gee JC; Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
  • Torigian DA; Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
  • Rader D; Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
  • Kahn CE; Department of Medicine, University of Pennsylvania, Philadelphia, PA 19104, USA.
  • Witschey WR; Perelman School of Medicine, University of Pennsylvania, Philadelphia 19104, USA.
  • Sagreiya H; Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
Predict Intell Med ; 14277: 46-57, 2023 Oct.
Article em En | MEDLINE | ID: mdl-38957550
ABSTRACT
Early diagnosis of Type 2 Diabetes Mellitus (T2DM) is crucial to enable timely therapeutic interventions and lifestyle modifications. As the time available for clinical office visits shortens and medical imaging data become more widely available, patient image data could be used to opportunistically identify patients for additional T2DM diagnostic workup by physicians. We investigated whether image-derived phenotypic data could be leveraged in tabular learning classifier models to predict T2DM risk in an automated fashion to flag high-risk patients without the need for additional blood laboratory measurements. In contrast to traditional binary classifiers, we leverage neural networks and decision tree models to represent patient data as 'SynthA1c' latent variables, which mimic blood hemoglobin A1c empirical lab measurements, that achieve sensitivities as high as 87.6%. To evaluate how SynthA1c models may generalize to other patient populations, we introduce a novel generalizable metric that uses vanilla data augmentation techniques to predict model performance on input out-of-domain covariates. We show that image-derived phenotypes and physical examination data together can accurately predict diabetes risk as a means of opportunistic risk stratification enabled by artificial intelligence and medical imaging. Our code is available at https//github.com/allisonjchae/DMT2RiskAssessment.
Palavras-chave

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article