4.6 Article

Deep learning for real-time auxiliary diagnosis of pancreatic cancer in endoscopic ultrasonography

Journal

FRONTIERS IN ONCOLOGY
Volume 12, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fonc.2022.973652

Keywords

deep learning; endoscopic ultrasonography; diagnosis; ultrasonography; pancreatic lesion

Categories

Funding

  1. Development Project of National Major Scientific Research Instrument [82027803]
  2. National Natural Science Foundation of China [81971623]
  3. Key Project of Natural Science Foundation of Zhejiang Province [LZ20H180001]
  4. Zhejiang Provincial Association Project for Mathematical Medicine [LSY19H180015]

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In recent years, deep learning has played an important role in cancer detection. This study aimed to differentiate pancreatic cancer (PC) or non-pancreatic cancer (NPC) lesions in real-time using endoscopic ultrasonography (EUS) images. By training a model based on EUS images using YOLOv5 algorithm, the study found that the model achieved convergence and showed potential for real-time decision support in distinguishing PC and NPC lesions.
In recent year, many deep learning have been playing an important role in the detection of cancers. This study aimed to real-timely differentiate a pancreatic cancer (PC) or a non-pancreatic cancer (NPC) lesion via endoscopic ultrasonography (EUS) image. A total of 1213 EUS images from 157 patients (99 male, 58 female) with pancreatic disease were used for training, validation and test groups. Before model training, regions of interest (ROIs) were manually drawn to mark the PC and NPC lesions using Labelimage software. Yolov5m was used as the algorithm model to automatically distinguish the presence of pancreatic lesion. After training the model based on EUS images using YOLOv5, the parameters achieved convergence within 300 rounds (GIoU Loss: 0.01532, Objectness Loss: 0.01247, precision: 0.713 and recall: 0.825). For the validation group, the mAP0.5 was 0.831, and mAP@.5:.95 was 0.512. In addition, the receiver operating characteristic (ROC) curve analysis showed this model seemed to have a trend of more AUC of 0.85 (0.665 to 0.956) than the area under the curve (AUC) of 0.838 (0.65 to 0.949) generated by physicians using EUS detection without puncture, although pairwise comparison of ROC curves showed that the AUC between the two groups was not significant (z= 0.15, p = 0.8804). This study suggested that the YOLOv5m would generate attractive results and allow for the real-time decision support for distinction of a PC or a NPC lesion.

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