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Method and system for machine learning based classification of vascular branches

机译:基于机器学习的血管分支分类方法和系统

摘要

A method and apparatus for learning based classification of vascular branches to distinguish falsely detected branches from true branches is disclosed. A plurality of overlapping fixed size branch segments are sampled from branches of a detected centerline tree of a target vessel extracted from a medical image of a patient. A plurality of 1D profiles are extracted along each of the overlapping fixed size branch segments. A probability score for each of the overlapping fixed size branch segments is calculated based on the plurality of 1D profiles extracted for each branch segment using a trained deep neural network classifier. The trained deep neural network classifier may be a convolutional neural network (CNN) trained to predict a probability of a branch segment being fully part of a target vessel based on multi-channel 1D input. A final probability score is assigned to each centerline point in the branches of the detected centerline tree based on the probability scores of the overlapping branch segments containing that centerline point. The branches of the detected centerline tree of the target vessel are pruned based on the final probability scores of the centerline points.
机译:公开了一种用于学习基于血管分支的分类以将错误检测的分支与真实分支区分开的方法和设备。从从患者的医学图像提取的目标血管的检测到的中心线树的分支中采样多个重叠的固定尺寸的分支段。沿着每个重叠的固定大小分支段提取多个1D轮廓。使用训练有素的深度神经网络分类器,基于为每个分支段提取的多个1D轮廓,计算每个重叠的固定大小分支段的概率得分。训练的深度神经网络分类器可以是被训练以基于多通道1D输入预测分支段完全成为目标血管的一部分的概率的卷积神经网络(CNN)。基于包含该中心线点的重叠分支段的概率分数,将最终概率分数分配给检测到的中心线树的分支中的每个中心线点。基于中心线点的最终概率分数修剪目标船的检测到的中心线树的分支。

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