343 CAN ARTIFICIAL INTELLIGENCE-BASED DIAGNOSTIC SYSTEM PERFORM DIFFERENTIAL DIAGNOSIS OF GASTRIC CANCER AND GASTRIC ULCER?

2019 ◽  
Vol 89 (6) ◽  
pp. AB74
Author(s):  
Ken Namikawa ◽  
Toshiaki Hirasawa ◽  
Yohei Ikenoyama ◽  
Mitsuaki Ishioka ◽  
Atsuko Tamashiro ◽  
...  
Endoscopy ◽  
2020 ◽  
Vol 52 (12) ◽  
pp. 1077-1083 ◽  
Author(s):  
Ken Namikawa ◽  
Toshiaki Hirasawa ◽  
Kaoru Nakano ◽  
Yohei Ikenoyama ◽  
Mitsuaki Ishioka ◽  
...  

Abstract Background We previously reported for the first time the usefulness of artificial intelligence (AI) systems in detecting gastric cancers. However, the “original convolutional neural network (O-CNN)” employed in the previous study had a relatively low positive predictive value (PPV). Therefore, we aimed to develop an advanced AI-based diagnostic system and evaluate its applicability for the classification of gastric cancers and gastric ulcers. Methods We constructed an “advanced CNN” (A-CNN) by adding a new training dataset (4453 gastric ulcer images from 1172 lesions) to the O-CNN, which had been trained using 13 584 gastric cancer and 373 gastric ulcer images. The diagnostic performance of the A-CNN in terms of classifying gastric cancers and ulcers was retrospectively evaluated using an independent validation dataset (739 images from 100 early gastric cancers and 720 images from 120 gastric ulcers) and compared with that of the O-CNN by estimating the overall classification accuracy. Results The sensitivity, specificity, and PPV of the A-CNN in classifying gastric cancer at the lesion level were 99.0 % (95 % confidence interval [CI] 94.6 %−100 %), 93.3 % (95 %CI 87.3 %−97.1 %), and 92.5 % (95 %CI 85.8 %−96.7 %), respectively, and for classifying gastric ulcers were 93.3 % (95 %CI 87.3 %−97.1 %), 99.0 % (95 %CI 94.6 %−100 %), and 99.1 % (95 %CI 95.2 %−100 %), respectively. At the lesion level, the overall accuracies of the O- and A-CNN for classifying gastric cancers and gastric ulcers were 45.9 % (gastric cancers 100 %, gastric ulcers 0.8 %) and 95.9 % (gastric cancers 99.0 %, gastric ulcers 93.3 %), respectively. Conclusion The newly developed AI-based diagnostic system can effectively classify gastric cancers and gastric ulcers.


1957 ◽  
Vol 33 (5) ◽  
pp. 703-713 ◽  
Author(s):  
Angelo Ε. Dagradi ◽  
Delobes E. Johnson

2020 ◽  
Author(s):  
IF Cherciu Harbiyeli ◽  
IM Cazacu ◽  
ET Ivan ◽  
MS Serbanescu ◽  
B Hurezeanu ◽  
...  

Diagnosis ◽  
2021 ◽  
Vol 0 (0) ◽  
Author(s):  
Taro Shimizu

Abstract Diagnostic errors are an internationally recognized patient safety concern, and leading causes are faulty data gathering and faulty information processing. Obtaining a full and accurate history from the patient is the foundation for timely and accurate diagnosis. A key concept underlying ideal history acquisition is “history clarification,” meaning that the history is clarified to be depicted as clearly as a video, with the chronology being accurately reproduced. A novel approach is presented to improve history-taking, involving six dimensions: Courtesy, Control, Compassion, Curiosity, Clear mind, and Concentration, the ‘6 C’s’. We report a case that illustrates how the 6C approach can improve diagnosis, especially in relation to artificial intelligence tools that assist with differential diagnosis.


Author(s):  
Vladimir Levkin ◽  
Nina Gagarina ◽  
Sergey Kharnas ◽  
Gaziyav Musaev ◽  
Artem Shiryaev ◽  
...  

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