Artificial Intelligence-Based Colorectal Polyp Histology Prediction by Using Narrow-Band Image-Magnifying Colonoscopy

被引:8
|
作者
Racz, Istvan [1 ]
Horvath, Andras [2 ]
Kranitz, Noemi [3 ]
Kiss, Gyongyi [1 ]
Regoczi, Henriett [1 ]
Horvath, Zoltan [4 ]
机构
[1] Petz Aladar Univ Teaching Hosp, Dept Internal Med & Gastroenterol, Vasvari P U 2, H-9024 Gyor, Hungary
[2] Szechenyi Istvan Univ, Dept Phys & Chem, Gyor, Hungary
[3] Petz Aladar Univ Teaching Hosp, Dept Pathol, Gyor, Hungary
[4] Szechenyi Istvan Univ, Dept Math & Informat, Gyor, Hungary
关键词
Artificial intelligence; Colorectal polyps; Histology prediction; Narrow band imaging; Narrow-band imaging international colorectal endoscopic classification; VALUABLE ENDOSCOPIC INNOVATIONS; COMPUTER-AIDED SYSTEM; REAL-TIME; GASTROINTESTINAL ENDOSCOPY; CLASSIFICATION; TUMORS; DIFFERENTIATION; PRESERVATION; VALIDATION; DIAGNOSIS;
D O I
10.5946/ce.2021.149
中图分类号
R57 [消化系及腹部疾病];
学科分类号
摘要
Background/Aims: We have been developing artificial intelligence based polyp histology prediction (AIPHP) method to classify Narrow Band Imaging (NBI) magnifying colonoscopy images to predict the hyperplastic or neoplastic histology of polyps. Our aim was to analyze the accuracy of AIPHP and narrow-band imaging international colorectal endoscopic (NICE) classification based histology predictions and also to compare the results of the two methods. Methods: We studied 373 colorectal polyp samples taken by polypectomy from 279 patients. The documented NBI still images were analyzed by the AIPHP method and by the NICE classification parallel The AIPHP software was created by machine learning method. The software measures five geometrical and color features on the endoscopic image. Results: The accuracy of AIPHP was 86.6% (323/373) in total of polyps. We compared the AIPHP accuracy results for diminutive and non-diminutive polyps (82.1% vs. 92.2%; p=0.0032). The accuracy of the hyperplastic histology prediction was significantly better by NICE compared to AIPHP method both in the diminutive polyps (n=207) (95.2% vs. 82.1%) (p<0.001) and also in all evaluated polyps (n=373) (97.1% vs. 86.6%) (p<0.001) Conclusions: Our artificial intelligence based polyp histology prediction software could predict histology with high accuracy only the large size polyp subgroup.
引用
收藏
页码:113 / 121
页数:9
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