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Ariadne's Thread:Using Text Prompts to Improve Segmentation of Infected Areas from Chest X-ray images

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Segmentation of the infected areas of the lung is essential for quantifying the severity of lung disease like pulmonary infections. Existing medical image segmentation methods are almost uni-modal methods based on image. However, these image-only methods tend to produce inaccurate results unless trained with large amounts of annotated data. To overcome this challenge, we propose a language-driven segmentation method that uses text prompt to improve to the segmentation result. Experiments on the QaTa-COV19 dataset indicate that our method improves the Dice score by 6.09% at least compared to the uni-modal methods. Besides, our extended study reveals the flexibility of multi-modal methods in terms of the information granularity of text and demonstrates that multi-modal methods have a significant advantage over image-only methods in terms of the size of training data required.

Yi Zhong, Mengqiu Xu, Kongming Liang, Kaixin Chen, Ming Wu• 2023

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationMedical Image Segmentation Aggregate (Average of BUSI, BTMRI, ISIC, Kvasir-SEG, QaTa-COV19, and EUS) (test)
DSC70.07
80
Medical Image SegmentationQaTa-COV19 (test)
Dice89.78
49
Medical Image SegmentationQaTa-COV19
Dice Score89.8
39
Medical Image SegmentationMosMedData+ (test)
Dice77.75
29
Medical Image SegmentationMosMedData+
Dice77.75
28
SegmentationBrain Tumor
mIoU71.55
12
SegmentationPolyp
mIoU80.65
12
Medical Image SegmentationPolyp Endoscopy (ID)
DSC68.25
6
Medical Image SegmentationPolyp Endoscopy (OOD)
DSC27.24
6
Medical Image SegmentationPolyp Endoscopy (HM)
DSC38.94
6
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