4.6 Article

R-JaunLab: Automatic Multi-Class Recognition of Jaundice on Photos of Subjects with Region Annotation Networks

Journal

JOURNAL OF DIGITAL IMAGING
Volume 34, Issue 2, Pages 337-350

Publisher

SPRINGER
DOI: 10.1007/s10278-021-00432-7

Keywords

Occult Jaundice; Total Serum Bilirubin (TBil); Convolutional Neural Network (CNN); Region Annotation Network (RAN)

Funding

  1. Projects of the National Social Science Foundation of China [19BTJ011]
  2. Graduate Student Innovation Foundation of Central South University [2019zzts213]

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The study presents a novel approach for multi-class recognition of jaundice, addressing critical difficulties and subtle complexities in identifying occult jaundice, obvious jaundice, and healthy controls. By developing and training region annotation networks and an efficient jaundice recognizer, and unifying them through shared convolutional layers, the proposed method outperformed state-of-the-art convolutional neural networks and human observers in detecting jaundice, demonstrating the potential for practical applications in clinical settings.
Jaundice occurs as a symptom of various diseases, such as hepatitis, the liver cancer, gallbladder or pancreas. Therefore, clinical measurement with special equipment is a common method that is used to identify the total serum bilirubin level in patients. Fully automated multi-class recognition of jaundice combines two key issues: (1) the critical difficulties in multi-class recognition of jaundice approaches contrasting with the binary class and (2) the subtle difficulties in multi-class recognition of jaundice represent extensive individuals variability of high-resolution photos of subjects, huge coherency between healthy controls and occult jaundice, as well as broadly inhomogeneous color distribution. We introduce a novel approach for multi-class recognition of jaundice to detect occult jaundice, obvious jaundice and healthy controls. First, region annotation network is developed and trained to propose eye candidates. Subsequently, an efficient jaundice recognizer is proposed to learn similarities, context, localization features and globalization characteristics on photos of subjects. Finally, both networks are unified by using shared convolutional layer. Evaluation of the structured model in a comparative study resulted in a significant performance boost (categorical accuracy for mean 91.38%) over the independent human observer. Our work was exceeded against the state-of-the-art convolutional neural network (96.85% and 90.06% for training and validation subset, respectively) and showed a remarkable categorical result for mean 95.33% on testing subset. The proposed network makes a performance better than physicians. This work demonstrates the strength of our proposal to help bringing an efficient tool for multi-class recognition of jaundice into clinical practice.

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