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Recent advancements in deep learning techniques have contributed to developing improved polyp segmentation methods, thereby aiding in the diagnosis of colorectal cancer and facilitating automated surgery like endoscopic submucosal dissection (ESD). However, the scarcity of well-annotated data poses challenges by increasing the annotation burden and diminishing the performance of fully-supervised learning approaches. Additionally, distribution shifts due to variations among patients and medical centers require the model to generalize well during testing. To address these concerns, we present PedSemiSeg, a pedagogy-inspired semi-supervised learning framework designed to enhance polyp segmentation performance with limited labeled training data. In particular, we take inspiration from the pedagogy used in real-world educational settings, where teacher feedback and peer tutoring are both crucial in influencing the overall learning outcome. Expanding upon this concept, our approach involves supervising the outputs of the strongly augmented input (the students) using the pseudo and complementary labels crafted from the output of the weakly augmented input (the teacher) in both positive and negative learning manners. Additionally, we introduce reciprocal peer tutoring among the students, guided by respective prediction entropy. With these holistic learning processes, we aim to achieve consistent predictions for various versions of the same input and maximize the utilization of the abundant unlabeled data. Experimental results on two public datasets demonstrate the superiority of our method in polyp segmentation across various labeled data ratios. Furthermore, our approach exhibits excellent generalization capabilities on external unseen multi-center datasets, highlighting its broader clinical significance in practical applications during deployment.
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http://dx.doi.org/10.1016/j.compmedimag.2025.102591 | DOI Listing |
Surg Endosc
September 2025
Department of Digestive Medicine Center, The Seventh Affiliated Hospital of Sun Yat-Sen University, Shenzhen, 518107, People's Republic of China.
Background: Laparoscopic segmental resection (LSR) is a common treatment modality for endoscopically unresectable colorectal polyps. Laparoscopic endoscopic cooperative surgery (LECS) has emerged as a promising alternative, yet current evidence of its efficacy remains limited.
Objectives: This meta-analysis aims to compare the therapeutic outcomes of LECS versus LSR for endoscopically unresectable colorectal polyps and to provide robust evidence for clinical practice.
IET Syst Biol
September 2025
School of Computer and Information Techonology, Xinyang Normal University, Xinyang, China.
Accurate polyp segmentation is crucial for computer-aided diagnosis and early detection of colorectal cancer. Whereas feature pyramid network (FPN) and its variants are widely used in polyp segmentation, inherent limitations existing in FPN include: (1) repeated upsampling degrades fine details, reducing small polyp segmentation accuracy and (2) naive feature fusion (e.g.
View Article and Find Full Text PDFInt J Surg Case Rep
August 2025
Paediatrics Medicine, Services Hospital, Lahore, Pakistan.
Introduction: Adult intussusception is rare, and its occurrence following colonoscopy-especially after multiple polypectomies-is exceptionally uncommon. This case highlights a rare post-endoscopic complication with implications for early diagnosis and management.
Case Presentation: A 55-year-old man presented with abdominal pain, bloating, and nausea 24 h after colonoscopy with removal of nine polyps via cold snare technique.
Comput Biol Med
August 2025
Department of Computer Science and Engineering, BRAC University, Dhaka, Bangladesh. Electronic address:
Segmenting polyps in colonoscopy images is essential for the early identification and diagnosis of colorectal cancer, a significant cause of worldwide cancer deaths. Prior deep learning based models such as Attention based variation, UNet variations and Transformer-derived networks have had notable success in capturing intricate features and complex polyp shapes. However they frequently encounter challenges in pinpointing small details and enhancing the representation of features on both local and global scale.
View Article and Find Full Text PDFSurg Endosc
August 2025
Department of Surgical Nursing, Florence Nightingale Faculty of Nursing, Istanbul University-Cerrahpaşa, Istanbul, Turkey.
Background: Effective bowel preparation is essential for successful colonoscopy, allowing for optimal mucosal visualization and polyp detection. While standard educational materials are commonly used, mobile health technologies offer potential for improving patient adherence and preparation quality.
Methods: This study aimed to evaluate the impact of mobile application-based bowel preparation training on bowel preparation compliance, quality, and anxiety levels in patients scheduled for colonoscopy.