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  4. Differences in cohort study data affect external validation of artificial intelligence models for predictive diagnostics of dementia - lessons for translation into clinical practice
 
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2020
Journal Article
Title

Differences in cohort study data affect external validation of artificial intelligence models for predictive diagnostics of dementia - lessons for translation into clinical practice

Abstract
Artificial intelligence (AI) approaches pose a great opportunity for individualized, pre-symptomatic disease diagnosis which plays a key role in the context of personalized, predictive, and finally preventive medicine (PPPM). However, to translate PPPM into clinical practice, it is of utmost importance that AI-based models are carefully validated. The validation process comprises several steps, one of which is testing the model on patient-level data from an independent clinical cohort study. However, recruitment criteria can bias statistical analysis of cohort study data and impede model application beyond the training data. To evaluate whether and how data from independent clinical cohort studies differ from each other, this study systematically compares the datasets collected from two major dementia cohorts, namely, the Alzheimer's Disease Neuroimaging Initiative (ADNI) and AddNeuroMed. The presented comparison was conducted on individual feature level and revealed significant differences among both cohorts. Such systematic deviations can potentially hamper the generalizability of results which were based on a single cohort dataset. Despite identified differences, validation of a previously published, ADNI trained model for prediction of personalized dementia risk scores on 244 AddNeuroMed subjects was successful: External validation resulted in a high prediction performance of above 80% area under receiver operator characteristic curve up to 6 years before dementia diagnosis. Propensity score matching identified a subset of patients from AddNeuroMed, which showed significantly smaller demographic differences to ADNI. For these patients, an even higher prediction performance was achieved, which demonstrates the influence systematic differences between cohorts can have on validation results. In conclusion, this study exposes challenges in external validation of AI models on cohort study data and is one of the rare cases in the neurology field in which such external validation was performed. The presented model represents a proof of concept that reliable models for personalized predictive diagnostics are feasible, which, in turn, could lead to adequate disease prevention and hereby enable the PPPM paradigm in the dementia field.
Author(s)
Birkenbihl, Colin  
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Emon, Mohammad Asif
Vrooman, Henri
Westwood, Sarah
Lovestone, Simon
Hofmann-Apitius, Martin  
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Fröhlich, Holger  
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Journal
The EPMA journal  
Project(s)
DEAL
Funder
European Commission EC  
Open Access
File(s)
Download (944.91 KB)
Rights
CC BY-NC-ND 4.0: Creative Commons Attribution-NonCommercial-NoDerivatives
DOI
10.1007/s13167-020-00216-z
10.24406/publica-r-263205
Additional link
Full text
Language
English
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
Keyword(s)
  • Predictive preventive personalized medicine (3 PM/PPPM)

  • Disease risk prediction

  • Cohort data

  • Model validation

  • Machine learning

  • Disease modeling

  • Artificial intelligence

  • Individualized patient profiling

  • Interdisciplinary

  • Multiprofessional

  • Risk modeling

  • Survival analysis

  • Bioinformatics

  • Alzheimers disease

  • Neurodegeneration

  • Precision medicine

  • Cohort comparison

  • Health data

  • Medical data

  • Data science

  • Translational medicine

  • Digital clinic

  • Propensity score matching

  • Sampling bias

  • Model performance

  • Dementia

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