首页> 外国专利> Disease detection from weakly annotated volumetric medical images using convolutional long short-term memory

Disease detection from weakly annotated volumetric medical images using convolutional long short-term memory

机译:使用卷积长短短期记忆从弱注释的体积医学图像中检测疾病

摘要

Systems and methods for developing a disease detection model. One method includes training the model using an image study and an associated disease label mined from a radiology report. The image study including a sequence of a plurality of two-dimensional slices of a three-dimensional image volume, and the model including a convolutional neural network layer and a convolutional long short-term memory layer. Training the model includes individually extracting a set of features from each of the plurality of two-dimensional slices using the convolutional neural network layer, sequentially processing the features extracted by the convolutional neural network layer for each of the plurality of two-dimensional slices using the convolutional long short-term memory layer, processing output from the convolutional long short-term memory layer for a sequentially last of the plurality of two-dimensional slices to generate a probability of the disease, and updating the model based on comparing the probability to the label.
机译:开发疾病检测模型的系统和方法。一种方法包括使用图像研究和从放射学报告中开采的相关疾病标签进行培训。图像研究包括三维图像容积的多个二维切片的序列,以及包括卷积神经网络层和卷积长短期存储器层的模型。培训该模型包括使用卷积神经网络层单独地从多个二维切片中的每一个分别提取一组特征,顺序地处理由卷积神经网络层中的每个二维切片中的每个二维切片提取的特征卷积长短短期记忆层,从卷积的长短期记忆层的处理输出,用于顺序最后最后的多个二维切片,以产生疾病的概率,并根据比较概率的概率更新模型标签。

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