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Label-Free Liver Tumor Segmentation

About

We demonstrate that AI models can accurately segment liver tumors without the need for manual annotation by using synthetic tumors in CT scans. Our synthetic tumors have two intriguing advantages: (I) realistic in shape and texture, which even medical professionals can confuse with real tumors; (II) effective for training AI models, which can perform liver tumor segmentation similarly to the model trained on real tumors -- this result is exciting because no existing work, using synthetic tumors only, has thus far reached a similar or even close performance to real tumors. This result also implies that manual efforts for annotating tumors voxel by voxel (which took years to create) can be significantly reduced in the future. Moreover, our synthetic tumors can automatically generate many examples of small (or even tiny) synthetic tumors and have the potential to improve the success rate of detecting small liver tumors, which is critical for detecting the early stages of cancer. In addition to enriching the training data, our synthesizing strategy also enables us to rigorously assess the AI robustness.

Qixin Hu, Yixiong Chen, Junfei Xiao, Shuwen Sun, Jieneng Chen, Alan Yuille, Zongwei Zhou• 2023

Related benchmarks

TaskDatasetResultRank
Early-stage tumor detectionLiver (test)
Sensitivity79.2
18
Early-stage tumor detectionPancreas (test)
Sensitivity0.732
18
Early-stage tumor detectionKidneys (test)
Sensitivity76.2
18
Early-stage tumor detectionLiver
Sensitivity77.8
9
Early-stage tumor detectionPancreas
Sensitivity67
9
Early-stage tumor detectionKidneys
Sensitivity0.667
9
Liver tumor segmentationLiTS (5-fold cross-validation)
DSC59.77
6
Tumor SegmentationLiver (test)
DSC69.7
3
Tumor SegmentationKidneys (test)
DSC80.8
3
Tumor SegmentationPancreas (test)
DSC (%)0.559
3
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