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Med-UniC: Unifying Cross-Lingual Medical Vision-Language Pre-Training by Diminishing Bias

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The scarcity of data presents a critical obstacle to the efficacy of medical visionlanguage pre-training (VLP). A potential solution lies in the combination of datasets from various language communities. Nevertheless, the main challenge stems from the complexity of integrating diverse syntax and semantics, language-specific medical terminology, and culture-specific implicit knowledge. Therefore, one crucial aspect to consider is the presence of community bias caused by different languages. This paper presents a novel framework named Unifying Cross-Lingual Medical Vision-Language Pre-Training (Med-UniC), designed to integrate multimodal medical data from the two most prevalent languages, English and Spanish. Specifically, we propose Cross-lingual Text Alignment Regularization (CTR) to explicitly unify cross-lingual semantic representations of medical reports originating from diverse language communities. CTR is optimized through latent language disentanglement, rendering our optimization objective to not depend on negative samples, thereby significantly mitigating the bias from determining positive-negative sample pairs within analogous medical reports. Furthermore, it ensures that the cross-lingual representation is not biased toward any specific language community. Med-UniC reaches superior performance across 5 medical image tasks and 10 datasets encompassing over 30 diseases, offering a versatile framework for unifying multi-modal medical data within diverse linguistic communities. The experimental outcomes highlight the presence of community bias in cross-lingual VLP. Reducing this bias enhances the performance not only in vision-language tasks but also in uni-modal visual tasks.

Zhongwei Wan, Che Liu, Mi Zhang, Jie Fu, Benyou Wang, Sibo Cheng, Lei Ma, C\'esar Quilodr\'an-Casas, Rossella Arcucci• 2023

Related benchmarks

TaskDatasetResultRank
Object DetectionRSNA
mAP (%)31.1
99
Semantic segmentationSIIM
Dice Coefficient (%)64.4
96
Semantic segmentationRSNA
Dice Score76.7
90
Object DetectionObject-CXR
mAP21.6
58
Medical Image ClassificationCovidx
Accuracy95.2
36
Medical Image ClassificationCheXpert
AUC91.2
36
Medical Image ClassificationRSNA
AUC94.5
36
Medical Image Re-identificationMIMIC-CXR
CMC-R192.9
26
Medical Image Re-identificationChestX-ray14
Rank-1 Accuracy74.3
26
Medical Image Re-identificationLIHC Abdominal-CT
CMC-R135.71
26
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