arXiv Analytics

Sign in

arXiv:2108.00713 [eess.IV]AbstractReferencesReviewsResources

Cohort Bias Adaptation in Aggregated Datasets for Lesion Segmentation

Brennan Nichyporuk, Jillian Cardinell, Justin Szeto, Raghav Mehta, Sotirios Tsaftaris, Douglas L. Arnold, Tal Arbel

Published 2021-08-02Version 1

Many automatic machine learning models developed for focal pathology (e.g. lesions, tumours) detection and segmentation perform well, but do not generalize as well to new patient cohorts, impeding their widespread adoption into real clinical contexts. One strategy to create a more diverse, generalizable training set is to naively pool datasets from different cohorts. Surprisingly, training on this \it{big data} does not necessarily increase, and may even reduce, overall performance and model generalizability, due to the existence of cohort biases that affect label distributions. In this paper, we propose a generalized affine conditioning framework to learn and account for cohort biases across multi-source datasets, which we call Source-Conditioned Instance Normalization (SCIN). Through extensive experimentation on three different, large scale, multi-scanner, multi-centre Multiple Sclerosis (MS) clinical trial MRI datasets, we show that our cohort bias adaptation method (1) improves performance of the network on pooled datasets relative to naively pooling datasets and (2) can quickly adapt to a new cohort by fine-tuning the instance normalization parameters, thus learning the new cohort bias with only 10 labelled samples.

Related articles: Most relevant | Search more
arXiv:2106.11330 [eess.IV] (Published 2021-06-21)
Context-aware PolyUNet for Liver and Lesion Segmentation from Abdominal CT Images
arXiv:2409.12155 [eess.IV] (Published 2024-09-18)
Autopet III challenge: Incorporating anatomical knowledge into nnUNet for lesion segmentation in PET/CT
arXiv:2211.16950 [eess.IV] (Published 2022-11-30)
DSNet: a simple yet efficient network with dual-stream attention for lesion segmentation