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A Liver Damage Prediction Using Partial Differential Segmentation with Improved Convolutional Neural Network.

B SumathyPankaj DadheechMonika JainAnkur SaxenaS HemalathaWenqi LiuStephen Jeswinde Nuagah
Published in: Journal of healthcare engineering (2022)
Several accuracies, sensitivity, and specificity measurements are produced to assess the categorization of LSM using an Improved Convolutional classifier. Approximately, 97.5% of the performance accuracy of the liver categorization is achieved with a 94.5% continuous interval (CI) of [0.6775 1.0000] and an error rate of 2.1%. The suggested method's performance is compared to that of two existing algorithms, and the sensitivity and specificity provide an overall average of 96% and 93%, respectively, with 95% Continuous Interval of [0.7513 1.0000] and [0.7126 1.0000] for sensitivity and specificity, respectively.
Keyphrases
  • convolutional neural network
  • deep learning
  • machine learning
  • structural basis
  • oxidative stress