In medical imaging, organ/pathology segmentation models trained on current publicly available and fully-annotated datasets usually do not well-represent the heterogeneous modalities, phases, pathologies, and clinical scenarios encountered in real environments. On the other hand, there are tremendous amounts of unlabelled patient imaging scans stored by many modern clinical centers. In this work, we present a novel segmentation strategy, co-heterogenous and adaptive segmentation (CHASe), which only requires a small labeled cohort of single phase imaging data to adapt to any unlabeled cohort of heterogenous multi-phase data with possibly new clinical scenarios and pathologies. To do this, we propose a versatile framework that fuses appearance based semi-supervision, mask based adversarial domain adaptation, and pseudo-labeling. We also introduce co-heterogeneous training, which is a novel integration of co-training and hetero modality learning. We have evaluated CHASe using a clinically comprehensive and challenging dataset of multi-phase computed tomography (CT) imaging studies (1147 patients and 4577 3D volumes). Compared to previous state-of-the-art baselines, CHASe can further improve pathological liver mask Dice-Sorensen coefficients by ranges of $4.2\% \sim 9.4\%$, depending on the phase combinations: e.g., from $84.6\%$ to $94.0\%$ on non-contrast CTs.
翻译:在医学成像中,根据目前公开提供和充分附加说明的数据集而培训的器官/病理分解模型通常没有很好地展示在现实环境中遇到的各种模式、阶段、病理和临床假设情景。另一方面,许多现代临床中心储存了大量未经贴标签的病人成像扫描,许多现代临床中心也储存了大量未经贴标签的病人成像扫描。在这项工作中,我们提出了一种新的分解战略,即混合式和适应式分解(CHASe),这只需要有少量贴标签的单一阶段成像数据组群,以适应任何未贴标签的混合多阶段数据组群,并可能出现新的临床假设和病理。为了做到这一点,我们提出了一个多阶段框架,将外观与半超视、以面具为基础的对抗性格域适应和假标签相结合。我们还采用了一种新型的混合培训与异系模式学习(CHASe),我们使用一个临床全面而具有挑战性的多阶段计算式数据组合(CT)成像研究(1147病人和4577 eD卷),我们提议了一个多级框架,比以前的国家-CAS-9-rass-maisal bas-males-maisal-maisal-tais-taisal bas-tais-tais-tais-tais-taildlex。