Abstract
Abstract
Purpose
This paper considers a new problem setting for multi-organ segmentation based on the following observations. In reality, (1) collecting a large-scale dataset from various institutes is usually impeded due to privacy issues; (2) many images are not labeled since the slice-by-slice annotation is costly; and (3) datasets may exhibit inconsistent, partial annotations across different institutes. Learning a federated model from these distributed, partially labeled, and unlabeled samples is an unexplored problem.
Methods
To simulate this multi-organ segmentation problem, several distributed clients and a central server are maintained. The central server coordinates with clients to learn a global model using distributed private datasets, which comprise a small part of partially labeled images and a large part of unlabeled images. To address this problem, a practical framework that unifies partially supervised learning (PSL), semi-supervised learning (SSL), and federated learning (FL) paradigms with PSL, SSL, and FL modules is proposed. The PSL module manages to learn from partially labeled samples. The SSL module extracts valuable information from unlabeled data. Besides, the FL module aggregates local information from distributed clients to generate a global statistical model. With the collaboration of three modules, the presented scheme could take advantage of these distributed imperfect datasets to train a generalizable model.
Results
The proposed method was extensively evaluated with multiple abdominal CT datasets, achieving an average result of 84.83% in Dice and 41.62 mm in 95HD for multi-organ (liver, spleen, and stomach) segmentation. Moreover, its efficacy in transfer learning further demonstrated its good generalization ability for downstream segmentation tasks.
Conclusion
This study considers a novel problem of multi-organ segmentation, which aims to develop a generalizable model using distributed, partially labeled, and unlabeled CT images. A practical framework is presented, which, through extensive validation, has proved to be an effective solution, demonstrating strong potential in addressing this challenging problem.
Publisher
Springer Science and Business Media LLC
Reference22 articles.
1. Cerrolaza JJ, Picazo ML, Humbert L, Sato Y, Rueckert D, Ángel González Ballester M, Linguraru MG (2019) Computational anatomy for multi-organ analysis in medical imaging: a review. Med Image Anal 56:44–67
2. Fu Y, Lei Y, Wang T, Curran WJ, Liu T, Yang X (2021) A review of deep learning based methods for medical image multi-organ segmentation. Phys Med 85:107–122
3. Ji Y, Bai H, GE C, Yang J, Zhu Y, Zhang R, Li Z, Zhanng L, Ma W, Wan X, Luo P (2022) AMOS: a large-scale abdominal multi-organ benchmark for versatile medical image segmentation. In: Advances in neural information processing systems
4. Tarvainen A, Valpola H (2017) Mean teachers are better role models: weight-averaged consistency targets improve semi-supervised deep learning results. In: Advances in neural information processing systems, vol 30
5. French G, Laine S, Aila T, Mackiewicz M, Finlayson G (2020) Semi-supervised semantic segmentation needs strong, varied perturbations. In: British machine vision conference