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首页> 外文期刊>Physics in medicine and biology. >Evolutionary pruning of transfer learned deep convolutional neural network for breast cancer diagnosis in digital breast tomosynthesis
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Evolutionary pruning of transfer learned deep convolutional neural network for breast cancer diagnosis in digital breast tomosynthesis

机译:转移进化修剪学习了数字乳腺癌乳腺癌诊断的深度卷积神经网络

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Deep learning models are highly parameterized, resulting in difficulty in inference and transfer learning for image recognition tasks. In this work, we propose a layered pathway evolution method to compress a deep convolutional neural network (DCNN) for classification of masses in digital breast tomosynthesis (DBT). The objective is to prune the number of tunable parameters while preserving the classification accuracy. In the first stage transfer learning, 19 632 augmented regions-of-interest (ROIs) from 2454 mass lesions on mammograms were used to train a pre-trained DCNN on ImageNet. In the second stage transfer learning, the DCNN was used as a feature extractor followed by feature selection and random forest classification. The pathway evolution was performed using genetic algorithm in an iterative approach with tournament selection driven by count-preserving crossover and mutation. The second stage was trained with 9120 DBT ROIs from 228 mass lesions using leave-one-case-out cross-validation. The DCNN was reduced by 87% in the number of neurons, 34% in the number of parameters, and 95% in the number of multiply-and-add operations required in the convolutional layers. The test AUC on 89 mass lesions from 94 independent DBT cases before and after pruning were 0.88 and 0.90, respectively, and the difference was not statistically significant (p 0.05). The proposed DCNN compression approach can reduce the number of required operations by 95% while maintaining the classification performance. The approach can be extended to other deep neural networks and imaging tasks where transfer learning is appropriate.
机译:深度学习模型是高度参数化的,导致推理和转移学习的难度进行图像识别任务。在这项工作中,我们提出了一种层叠的途径演化方法来压缩深度卷积神经网络(DCNN),用于数字乳房断层合成中的群体分类(DBT)。目的是在保留分类准确性的同时修剪可调参数的数量。在第一阶段转移学习中,19632年增强的兴趣区(ROI)从2454个乳房X线照片上的质量病变被用来在想象中培训预训练的DCNN。在第二阶段转移学习中,DCNN被用作特征提取器,然后用作特征选择和随机林分类。通过以迭代方法进行遗传算法进行途径演变,通过计数横跨交叉和突变驱动的锦标赛选择。第二阶段使用来自228个质量病变的9120 DBT ROI培训,使用休假交叉验证。 DCNN在神经元数量下降87%,参数数量为34%,卷积层所需的乘法和添加操作的数量为95%。在灌浆前后和之后的94个独立DBT病例的89个质量病变上的测试AUC分别为0.88和0.90,差异没有统计学意义(P> 0.05)。所提出的DCNN压缩方法可以在保持分类性能的同时将所需操作的数量减少95%。该方法可以扩展到其他深度神经网络和成像任务,其中传输学习是合适的。

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