Text-Driven Tumor Synthesis
Xinran Li, Yi Shuai, Chen Liu, Qi Chen, Qilong Wu, Pengfei Guo, Dong, Yang, Can Zhao, Pedro R. A. S. Bassi, Daguang Xu, Kang Wang, Yang Yang, Alan, Yuille, Zongwei Zhou

TL;DR
TextoMorph introduces a text-driven tumor synthesis method that enhances AI training by generating controllable, diverse tumor images based on radiology report texts, improving detection, segmentation, and classification performance.
Contribution
The paper presents a novel text-driven tumor synthesis approach that increases controllability and variability of synthetic tumors, reducing dependence on scarce image-report pairs and improving AI diagnostic tasks.
Findings
Increased sensitivity for early tumor detection (+8.5%)
Improved segmentation accuracy (DSC +6.3%)
Enhanced benign-malignant classification sensitivity (+8.2%)
Abstract
Tumor synthesis can generate examples that AI often misses or over-detects, improving AI performance by training on these challenging cases. However, existing synthesis methods, which are typically unconditional -- generating images from random variables -- or conditioned only by tumor shapes, lack controllability over specific tumor characteristics such as texture, heterogeneity, boundaries, and pathology type. As a result, the generated tumors may be overly similar or duplicates of existing training data, failing to effectively address AI's weaknesses. We propose a new text-driven tumor synthesis approach, termed TextoMorph, that provides textual control over tumor characteristics. This is particularly beneficial for examples that confuse the AI the most, such as early tumor detection (increasing Sensitivity by +8.5%), tumor segmentation for precise radiotherapy (increasing DSC by…
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Taxonomy
TopicsGenetics, Bioinformatics, and Biomedical Research
MethodsContrastive Learning
