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One-Shot Medical Landmark Detection

About

The success of deep learning methods relies on the availability of a large number of datasets with annotations; however, curating such datasets is burdensome, especially for medical images. To relieve such a burden for a landmark detection task, we explore the feasibility of using only a single annotated image and propose a novel framework named Cascade Comparing to Detect (CC2D) for one-shot landmark detection. CC2D consists of two stages: 1) Self-supervised learning (CC2D-SSL) and 2) Training with pseudo-labels (CC2D-TPL). CC2D-SSL captures the consistent anatomical information in a coarse-to-fine fashion by comparing the cascade feature representations and generates predictions on the training set. CC2D-TPL further improves the performance by training a new landmark detector with those predictions. The effectiveness of CC2D is evaluated on a widely-used public dataset of cephalometric landmark detection, which achieves a competitive detection accuracy of 81.01\% within 4.0mm, comparable to the state-of-the-art fully-supervised methods using a lot more than one training image.

Qingsong Yao, Quan Quan, Li Xiao, S. Kevin Zhou• 2021

Related benchmarks

TaskDatasetResultRank
Landmark DetectionHead X-ray dataset (test)
SDR (2mm)51.81
19
Landmark DetectionISBI Challenge 2015 (test)
SDR 2mm (%)55.83
15
Landmark DetectionCephalometric (test)
Success Rate (2mm)49.81
14
Landmark DetectionHand X-ray dataset (test)
MRE (mm)2.65
13
Landmark DetectionHand
MRE (mm)2.65
6
Landmark DetectionChest
MRE (mm)10.25
6
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