Intelligent Identification of Early Esophageal Cancer by Band-Selective Hyperspectral Imaging

Tsung‐Jung Tsai(Chia-Yi Christian Hospital), Arvind Mukundan(National Chung Cheng University), Yu-Sheng Chi(National Chung Cheng University), Yu-Ming Tsao(National Chung Cheng University), Yao‐Kuang Wang(Kaohsiung Medical University), Tsung‐Hsien Chen(Chia-Yi Christian Hospital), I‐Chen Wu(Kaohsiung Medical University), Chien‐Wei Huang(Tajen University), Hsiang‐Chen Wang(National Chung Cheng University)
Cancers
September 1, 2022
Cited by 70Open Access
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Abstract

In this study, the combination of hyperspectral imaging (HSI) technology and band selection was coupled with color reproduction. The white-light images (WLIs) were simulated as narrow-band endoscopic images (NBIs). As a result, the blood vessel features in the endoscopic image became more noticeable, and the prediction performance was improved. In addition, a single-shot multi-box detector model for predicting the stage and location of esophageal cancer was developed to evaluate the results. A total of 1780 esophageal cancer images, including 845 WLIs and 935 NBIs, were used in this study. The images were divided into three stages based on the pathological features of esophageal cancer: normal, dysplasia, and squamous cell carcinoma. The results showed that the mean average precision (mAP) reached 80% in WLIs, 85% in NBIs, and 84% in HSI images. This study's results showed that HSI has more spectral features than white-light imagery, and it improves accuracy by about 5% and matches the results of NBI predictions.


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