MCICSAM: Monte Carlo-guided Interpolation Consistency Segment Anything Model for Semi-Supervised Prostate Zone Segmentation
Guantian Huang, Beibei Li, Xiaobing Fan, Aritrick Chatterjee, Cheng, Wei, Shouliang Qi, Wei Qian, Dianning He

TL;DR
This paper introduces MCICSAM, a semi-supervised prostate segmentation model that leverages Monte Carlo-guided interpolation consistency and SAM to improve accuracy with limited labeled data.
Contribution
It proposes a novel semi-supervised learning approach combining Monte Carlo uncertainty analysis with SAM for improved prostate segmentation.
Findings
Achieved Dice scores of 79.38% and 89.95% for prostate zones.
Reduced Hausdorff Distance at 95th percentile to 3.12 and 2.27.
Demonstrated strong generalizability in prostate segmentation tasks.
Abstract
Accurate segmentation of various regions within the prostate is pivotal for diagnosing and treating prostate-related diseases. However, the scarcity of labeled data, particularly in specialized medical fields like prostate imaging, poses a significant challenge. Segment Anything Model (SAM) is a new large model for natural image segmentation, but there are some challenges in medical imaging. In order to better utilize the powerful feature extraction capability of SAM as well as to address the problem of low data volume for medical image annotation, we use Low-Rank Adaptation (LoRA) and semi-supervised learning methods of Monte Carlo guided interpolation consistency (MCIC) to enhance the fine-tuned SAM. We propose Monte Carlo-guided Interpolation Consistency Segment Anything Model (MCICSAM) for application to semi-supervised learning based prostate region segmentation. In the unlabeled…
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Taxonomy
TopicsProstate Cancer Diagnosis and Treatment
MethodsSegment Anything Model
