Deep Omni-supervised Learning for Rib Fracture Detection from Chest Radiology Images
Zhizhong Chai, Luyang Luo, Huangjing Lin, Pheng-Ann Heng, and Hao Chen

TL;DR
This paper introduces ORF-Netv2, a novel omni-supervised learning framework for rib fracture detection that effectively leverages fully-labeled, weakly-labeled, and unlabeled data to improve detection accuracy while reducing annotation effort.
Contribution
The paper presents a multi-branch omni-supervised detection network with a co-training-based label assignment strategy, enabling robust learning from diverse supervision levels in medical imaging.
Findings
Achieves higher mAP scores than baseline models on multiple datasets.
Outperforms other label-efficient detection methods across various scenarios.
Demonstrates effective utilization of mixed supervision data for improved detection.
Abstract
Deep learning (DL)-based rib fracture detection has shown promise of playing an important role in preventing mortality and improving patient outcome. Normally, developing DL-based object detection models requires a huge amount of bounding box annotation. However, annotating medical data is time-consuming and expertise-demanding, making obtaining a large amount of fine-grained annotations extremely infeasible. This poses a pressing need {for} developing label-efficient detection models to alleviate radiologists' labeling burden. To tackle this challenge, the literature on object detection has witnessed an increase of weakly-supervised and semi-supervised approaches, yet still lacks a unified framework that leverages various forms of fully-labeled, weakly-labeled, and unlabeled data. In this paper, we present a novel omni-supervised object detection network, ORF-Netv2, to leverage as much…
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Taxonomy
TopicsHead and Neck Cancer Studies · Trauma Management and Diagnosis · Lung Cancer Diagnosis and Treatment
