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Constructing an automatic diagnosis and severity-classification model for acromegaly using facial photographs by deep learning.

Yanguo KongXiangyi KongCheng HeChangsong LiuLiting WangLijuan SuJun GaoQi GuoRan Cheng
Published in: Journal of hematology & oncology (2020)
Due to acromegaly's insidious onset and slow progression, its diagnosis is usually delayed, thus causing severe complications and treatment difficulty. A convenient screening method is imperative. Based on our previous work, we herein developed a new automatic diagnosis and severity-classification model for acromegaly using facial photographs by deep learning on the data of 2148 photographs at different severity levels. Each photograph was given a score reflecting its severity (range 1~3). Our developed model achieved a prediction accuracy of 90.7% on the internal test dataset and outperformed the performance of ten junior internal medicine physicians (89.0%). The prospect of applying this model to real clinical practices is promising due to its potential health economic benefits.
Keyphrases
  • deep learning
  • machine learning
  • artificial intelligence
  • healthcare
  • primary care
  • convolutional neural network
  • public health
  • mental health
  • risk factors
  • big data
  • growth hormone