评估人工智能驱动的连续分割在三维重建形态学研究中的应用。

Satoru Muro, Takuya Ibara, Yuzuki Sugiyama, Akimoto Nimura, Keiichi Akita
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引用次数: 0

摘要

由于分割工作,三维重建非常耗时。我们评估了基于人工智能(AI)的分割和跟踪模型SAM-Track在解剖或组织结构分割中的准确性,并探索了人工智能提高研究效率的潜力。图像(通过计算机断层扫描[CT]和磁共振成像[MRI]获得),可见韩国人类开放资源的解剖切片,以及一系列尸体的组织学切片图像。采用SAM-Track方法对CT、MRI、解剖切片中的6个结构和组织学切片中的7个结构进行分割,并通过计算Dice相似系数与人工分割进行比较。然后对分割后的图像进行三维重建。CT与MRI的平均Dice评分差异较大(0.13 ~ 0.83);解剖切片显示准确率较高(0.31-0.82)。边缘清晰的结构,如股骨和肝脏,得分较高(0.69-0.83)。相比之下,软组织结构,如股直肌和胃,有不同的准确性(0.38-0.82)。组织学切片显示了很高的准确性,特别是对于清晰的组织,如胫骨和胰腺(0.95,0.90)。然而,分支结构(如动脉和静脉)的跟踪不太成功(0.72,0.52)。在3D重建中,骰子得分高与准确的形状有关,而得分低则表明预测形状与真实形状之间存在差异。基于人工智能的SAM-Track自动分割为解剖和组织结构提供了中等到良好的精度,有利于进行涉及三维重建的形态学研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating accuracy in artificial intelligence-powered serial segmentation for sectional images applied to morphological studies with three-dimensional reconstruction.

Three-dimensional (3D) reconstruction is time-consuming owing to segmentation work. We evaluated the accuracy of the artificial intelligence (AI)-based segmentation and tracking model SAM-Track for segmentation of anatomical or histological structures and explored the potential of AI to enhance research efficiency. Images [obtained via computed tomography (CT) and magnetic resonance imaging (MRI)], anatomical sections from a Visible Korean Human open resource, and serial histological section images of cadavers were obtained. Six structures in the CT, MRI, and anatomical sections and seven in the histological sections were segmented using SAM-Track and compared with manual segmentation by calculating the Dice similarity coefficient. Segmented images were then reconstructed three dimensionally. The average Dice scores of CT and MRI results varied (0.13-0.83); anatomical sections showed mostly good accuracy (0.31-0.82). Clear-edged structures, such as the femur and liver, had high scores (0.69-0.83). In contrast, soft tissue structures, such as the rectus femoris and stomach, had variable accuracy (0.38-0.82). Histological sections showed high accuracy, especially for well-delineated tissues, such as the tibia and pancreas (0.95, 0.90). However, the tracking of branching structures, such as arteries and veins, was less successful (0.72, 0.52). In 3D reconstruction, high Dice scores were associated with accurate shapes, whereas low scores indicated discrepancies between the predicted and true shapes. AI-based automatic segmentation using SAM-Track provides moderate-to-good accuracy for anatomical and histological structures and is beneficial for conducting morphological studies involving 3D reconstruction.

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