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
相关论文
共 50 条
  • [41] Evaluating deep-learning models for debris-covered glacier mapping
    Xie, Zhiyuan
    Asari, Vijayan K.
    Haritashya, Umesh K.
    APPLIED COMPUTING AND GEOSCIENCES, 2021, 12
  • [42] COMBINATION OF DEEP-LEARNING MODELS TO FORECAST STOCK PRICE OF AAPL AND TSLA
    Berradi, Zahra
    Lazaar, Mohamed
    Mahboub, Oussama
    Berradi, Halim
    Omara, Hicham
    JORDANIAN JOURNAL OF COMPUTERS AND INFORMATION TECHNOLOGY, 2022, 8 (04): : 345 - 356
  • [43] A Deep-Learning Approach for the Identification of New Subtypes of Lung Cancer
    Banerjee, Tuhin
    Corradini, Andrea
    INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING - IDEAL 2024, PT I, 2025, 15346 : 349 - 360
  • [44] Structure-based, deep-learning models for protein-ligand binding affinity prediction
    Wang, Debby D.
    Wu, Wenhui
    Wang, Ran
    JOURNAL OF CHEMINFORMATICS, 2024, 16 (01)
  • [45] Training deep-learning segmentation models from severely limited data
    Zhao, Yao
    Rhee, Dong Joo
    Cardenas, Carlos
    Court, Laurence E.
    Yang, Jinzhong
    MEDICAL PHYSICS, 2021, 48 (04) : 1697 - 1706
  • [46] Quality of Pre-trained Deep-Learning Models for Palmprint Recognition
    Rosca, Valentin
    Ignat, Anca
    2020 22ND INTERNATIONAL SYMPOSIUM ON SYMBOLIC AND NUMERIC ALGORITHMS FOR SCIENTIFIC COMPUTING (SYNASC 2020), 2020, : 202 - 209
  • [47] Lightweight advanced deep-learning models for stress detection on social media
    Qorich, Mohammed
    El Ouazzani, Rajae
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2025, 140
  • [48] Characterizing Sentinel Lymph Node Status in Breast Cancer Patients Using a Deep-Learning Model Compared With Radiologists' Analysis of Grayscale Ultrasound and Lymphosonography
    Machado, Priscilla
    Tahmasebi, Aylin
    Fallon, Samuel
    Liu, Ji-Bin
    Dogan, Basak E.
    Needleman, Laurence
    Lazar, Melissa
    Willis, Alliric I.
    Brill, Kristin
    Nazarian, Susanna
    Berger, Adam
    Forsberg, Flemming
    ULTRASOUND QUARTERLY, 2024, 40 (03)
  • [49] GBCHV an advanced deep learning anatomy aware model for accurate classification of gallbladder cancer utilizing ultrasound images
    Hasan, Md. Zahid
    Rony, Md. Awlad Hossen
    Chowa, Sadia Sultana
    Bhuiyan, Md. Rahad Islam
    Moustafa, Ahmed A.
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [50] Differentiation between gallbladder cancer with acute cholecystitis: Considerations for surgeons during emergency cholecystectomy, a cohort study
    Kim, Sung Hoon
    Jung, Dawn
    Ahn, Jhii-Hyun
    Kim, Kyung Sik
    INTERNATIONAL JOURNAL OF SURGERY, 2017, 45 : 1 - 7