Evolution strategy classification utilizing meta features and domain-specific statistical a priori models for fully-automated and entire segmentation of medical datasets in 3D radiology

G. Zwettler, W. Backfrieder
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Abstract

The employment of modern machine learning algorithms marks a huge advance towards automated and generalized segmentation in medical image analysis. Entire radiological datasets are classified, leading to a meaningful morphological interpretation, clearly distinguishing pathologies. After standard pre-processing, e.g. smoothing the input image data, the entire volume is partitioned into a large number of sub-regions utilizing watershed transform. These fragments are atomic and fused together building contiguous structures representing organs and typical morphology. This fusion is driven by similarity of regions. The relevant similarity measures respond to statistical a-priori models, derived from training datasets. In this work, the applicability of evolution strategy as classifier for a generic image segmentation approach is evaluated. Furthermore, it is analyzed if accuracy and robustness of the segmentation are improved by incorporation of meta features evaluated on the entire classification solution besides local features evaluated for the pre-fragmented regions to classify. The proposed generic strategy has a high potential in new segmentation domains, relying only on a small set of reference segmentations, as evaluated for different imaging modalities and diagnostic domains, such as brain MRI or abdominal CT. Comparison with results from other machine learning approaches, e.g. neural networks or genetic programming, proves that the newly developed evolution strategy is highly applicable for this classification domain and can best incorporate meta features for evaluation of solution fitness.
利用元特征和领域特定统计先验模型的进化策略分类,用于3D放射学中医疗数据集的全自动和完整分割
现代机器学习算法的使用标志着医学图像分析中自动化和广义分割的巨大进步。整个放射学数据集被分类,导致一个有意义的形态学解释,明确区分病理。经过标准的预处理,如对输入的图像数据进行平滑处理后,利用分水岭变换将整个体分割成大量的子区域。这些碎片是原子的,融合在一起,形成了代表器官和典型形态的连续结构。这种融合是由区域的相似性驱动的。相关的相似性度量响应从训练数据集导出的统计先验模型。在这项工作中,评估了进化策略作为通用图像分割方法分类器的适用性。在此基础上,分析了除了对预分割区域进行局部特征评估外,是否通过结合对整个分类方案进行评估的元特征来提高分割的准确性和鲁棒性。所提出的通用策略在新的分割领域具有很高的潜力,仅依赖于一小部分参考分割,如评估不同的成像模式和诊断领域,如脑MRI或腹部CT。与其他机器学习方法(如神经网络或遗传规划)的结果比较,证明了新开发的进化策略在该分类领域具有很高的适用性,并且可以最好地结合元特征来评估解的适应度。
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