BMC Medical Imaging (Jun 2023)

Establishment and validation of an AI-aid method in the diagnosis of myocardial perfusion imaging

  • Ruyi Zhang,
  • Peng Wang,
  • Yanzhu Bian,
  • Yan Fan,
  • Jianming Li,
  • Xuehui Liu,
  • Jie Shen,
  • Yujing Hu,
  • Xianghe Liao,
  • He Wang,
  • Chengyu Song,
  • Wangxiao Li,
  • Xiaojie Wang,
  • Momo Sun,
  • Jianping Zhang,
  • Miao Wang,
  • Shen Wang,
  • Yiming Shen,
  • Xuemei Zhang,
  • Qiang Jia,
  • Jian Tan,
  • Ning Li,
  • Sen Wang,
  • Lingyun Xu,
  • Weiming Wu,
  • Wei Zhang,
  • Zhaowei Meng

DOI
https://doi.org/10.1186/s12880-023-01037-y
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 10

Abstract

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Abstract Background This study aimed to develop and validate an AI (artificial intelligence)-aid method in myocardial perfusion imaging (MPI) to differentiate ischemia in coronary artery disease. Methods We retrospectively selected 599 patients who had received gated-MPI protocol. Images were acquired using hybrid SPECT-CT systems. A training set was used to train and develop the neural network and a validation set was used to test the predictive ability of the neural network. We used a learning technique named “YOLO” to carry out the training process. We compared the predictive accuracy of AI with that of physician interpreters (beginner, inexperienced, and experienced interpreters). Results Training performance showed that the accuracy ranged from 66.20% to 94.64%, the recall rate ranged from 76.96% to 98.76%, and the average precision ranged from 80.17% to 98.15%. In the ROC analysis of the validation set, the sensitivity range was 88.9 ~ 93.8%, the specificity range was 93.0 ~ 97.6%, and the AUC range was 94.1 ~ 96.1%. In the comparison between AI and different interpreters, AI outperformed the other interpreters (most P-value < 0.05). Conclusion The AI system of our study showed excellent predictive accuracy in the diagnosis of MPI protocols, and therefore might be potentially helpful to aid radiologists in clinical practice and develop more sophisticated models.

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