Shin Youmin, Bae Jung Ho, Kim Jung, Choi Jinwook, Kim Young-Gon
Department of Transdisciplinary Medicine, Seoul National University Hospital, 101 Daehak-ro, Jongno-gu, Seoul, 03080, Republic of Korea.
Interdisciplinary Program in Bioengineering, College of Engineering, Seoul National University, Seoul, Korea.
Sci Rep. 2025 Jul 1;15(1):21220. doi: 10.1038/s41598-025-04770-2.
Accurate real-time optical diagnosis that distinguishes neoplastic from non-neoplastic colorectal lesions during colonoscopy can lower the costs of pathological assessments, prevent unnecessary polypectomies, and help avoid adverse events. Using a multistep process, this study developed an explainable artificial intelligence method, niceAI, for classifying hyperplastic and adenomatous polyps. Radiomics and color were extracted, followed by feature selection with deep learning features using Spearman's correlation analysis. The selected deep features were merged with the narrow-band imaging International Colorectal Endoscopic grading, aligning with endoscopists' decision-making process to produce an interpretable diagnostic output. Initially, 2,048 deep features were identified; these were reduced to 103 in the second screening, and finally to 14. Similarly, 24 radiomics features were selected, whereas no color features were chosen. Comparative evaluation showed that niceAI had accuracy comparable to that of deep learning models (area under the curve, 0.946; accuracy, 0.883; sensitivity, 0.888; specificity, 0.879; positive predictive value, 0.893; negative predictive value, 0.872). This study introduces a novel system that combines radiomics and deep features to enhance the transparency and understanding of optical diagnosis. This approach bridges the gap between artificial intelligence predictions and clinically meaningful assessments, thereby offering a practical solution for enhancing diagnostic accuracy and clinical decision-making.
在结肠镜检查期间,能够区分肿瘤性与非肿瘤性结直肠病变的准确实时光学诊断可以降低病理评估成本、避免不必要的息肉切除术并有助于避免不良事件。本研究采用多步骤流程,开发了一种可解释的人工智能方法niceAI,用于对增生性息肉和腺瘤性息肉进行分类。提取了放射组学特征和颜色特征,然后使用Spearman相关性分析通过深度学习特征进行特征选择。将选定的深度特征与窄带成像国际结直肠内镜分级相结合,与内镜医师的决策过程保持一致,以产生可解释的诊断输出。最初,识别出2048个深度特征;在第二次筛选中减少到103个,最终减少到14个。同样,选择了24个放射组学特征,而未选择颜色特征。比较评估表明,niceAI的准确性与深度学习模型相当(曲线下面积为0.946;准确率为0.883;灵敏度为0.888;特异性为0.879;阳性预测值为0.893;阴性预测值为0.872)。本研究引入了一种结合放射组学和深度特征的新系统,以提高光学诊断的透明度和可理解性。这种方法弥合了人工智能预测与具有临床意义的评估之间的差距,从而为提高诊断准确性和临床决策提供了一种实用解决方案。