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Characterization of bone abnormalities from micro-CT images for evaluating drug toxicity in developmental and reproductive toxicology (DART) studies

机译:微型CT图像中骨异常的表征,用于评估发育和生殖毒理学中的药物毒性(DART)研究

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Routinely, compounds are assessed by developmental and reproductive toxicology (DART) studies to evaluate the potential for drug-induced birth defects. High-throughput micro-CT images are being used to evaluate skeletal abnormalities due to its ability to provide high quality images of bone structures. Currently, these micro-CT images are visually inspected for skeletal abnormalities, which is a time and resource intensive process. To reduce the resources needed for skeletal evaluation, we developed image analysis strategies that allow for automatic segmentation of whole body CT images into individual bones and use structural variations of shape characteristics to classify bones as normal or abnormal. Extraction of various structures in the skull and torso were accomplished sequentially starting with skull bones and moving towards the neck, vertebrae, ribs, and limbs. A total of 17 skull bones/structures (supraoccipital, mandible, squamosals, zygomatics, etc.) and 20 torso structures (ribs, spine, humerus, femur, tibia, etc.) were identified and isolated using this algorithm. Next, we used geometrical (volume, length, width, etc.) and shape-based characteristics to identify bones lying outside the normal distribution of numbers, shapes and sizes to flag fetuses for potential abnormalities. We applied this tool to a test data set of 167 fetuses with verified skeletal abnormalities and received sensitivity of 0.959 and specificity of 0.805. This analysis platform allows for fully automated batch processing of images. Future work will include further development of the current platform to improve performance.
机译:常规,通过发育和生殖毒理学(DART)研究评估化合物,以评估药物诱发的出生缺陷的潜力。由于其提供高质量图像的骨结构的能力,高通量微型CT图像用于评估骨架异常。目前,目视检查这些微CT图像是否有骨骼异常,这是一个时间和资源密集的过程。为了减少骨架评估所需的资源,我们开发了图像分析策略,允许将整个身体CT图像自动分割成单个骨骼,并使用形状特性的结构变化将骨骼分类为正常或异常。以颅骨骨头顺序地从头骨和躯干中提取各种结构,并朝向颈部,椎骨,肋骨和肢体移动。使用该算法鉴定了总共17个颅骨骨/结构(上癌症,下颌骨,鳞片,Zygomatics等)和20个躯干结构(肋骨,脊柱,肱骨,股骨,胫骨等)。接下来,我们使用了几何(体积,长度,宽度等)和基于形状的特性,以识别围绕数字,形状和尺寸正常分布的骨骼,以抵抗潜在异常的标记胎儿。我们将此工具应用于167胎儿的测试数据集,验证骨骼异常,接收的灵敏度为0.959,特异性为0.805。该分析平台允许完全自动化图像的批量处理。未来的工作将包括进一步发展目前的平台,以提高性能。

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