Deep-learning models for differentiation of xanthogranulomatous cholecystitis and gallbladder cancer on ultrasound

被引:5
|
作者
Gupta, Pankaj [1 ]
Basu, Soumen [2 ]
Yadav, Thakur Deen [3 ]
Kaman, Lileswar [4 ]
Irrinki, Santosh [4 ]
Singh, Harjeet [3 ]
Prakash, Gaurav [5 ]
Gupta, Parikshaa [6 ]
Nada, Ritambhra [7 ]
Dutta, Usha [8 ]
Sandhu, Manavjit Singh [1 ]
Arora, Chetan [2 ]
机构
[1] Postgrad Inst Med Educ & Res, Dept Hematol, Chandigarh 160 012, India
[2] Indian Inst Technol, Dept Comp Sci & Engn, New Delhi 110016, India
[3] Postgrad Inst Med Educ & Res, Dept Surg Gastroenterol, Chandigarh 160012, India
[4] Postgrad Inst Med Educ & Res, Dept Gen Surg, Chandigarh 160012, India
[5] Postgrad Inst Med Educ & Res, Dept Clin Hematol & Med Oncol, Chandigarh 160012, India
[6] Postgrad Inst Med Educ & Res, Dept Cytol, Chandigarh 160012, India
[7] Postgrad Inst Med Educ & Res, Dept Histopathol, Chandigarh 160012, India
[8] Postgrad Inst Med Educ & Res, Dept Gastroenterol, Chandigarh 160012, India
关键词
Computer; Deep learning; Gallbladder cancer; Neural network; Ultrasound;
D O I
10.1007/s12664-023-01483-0
中图分类号
R57 [消化系及腹部疾病];
学科分类号
摘要
BackgroundThe radiological differentiation of xanthogranulomatous cholecystitis (XGC) and gallbladder cancer (GBC) is challenging yet critical. We aimed at utilizing the deep learning (DL)-based approach for differentiating XGC and GBC on ultrasound (US).MethodsThis single-center study comprised consecutive patients with XGC and GBC from a prospectively acquired database who underwent pre-operative US evaluation of the gallbladder lesions. The performance of state-of-the-art (SOTA) DL models (GBCNet-convolutional neural network [CNN] and RadFormer, transformer) for XGC vs. GBC classification in US images was tested and compared with popular DL models and a radiologist.ResultsTwenty-five patients with XGC (mean age, 57 +/- 12.3, 17 females) and 55 patients with GBC (mean age, 54.6 +/- 11.9, 38 females) were included. The performance of GBCNet and RadFormer was comparable (sensitivity 89.1% vs. 87.3%, p = 0.738; specificity 72% vs. 84%, p = 0.563; and AUC 0.744 vs. 0.751, p = 0.514). The AUCs of DenseNet-121, vision transformer (ViT) and data-efficient image transformer (DeiT) were significantly smaller than of GBCNet (p = 0.015, 0.046, 0.013, respectively) and RadFormer (p = 0.012, 0.027, 0.007, respectively). The radiologist labeled US images of 24 (30%) patients non-diagnostic. In the remaining patients, the sensitivity, specificity and AUC for GBC detection were 92.7%, 35.7% and 0.642, respectively. The specificity of the radiologist was significantly lower than of GBCNet and RadFormer (p = 0.001).ConclusionSOTA DL models have a better performance than radiologists in differentiating XGC and GBC on the US.
引用
收藏
页码:805 / 812
页数:8
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