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. 2021 Apr 22;21(Suppl 1):134. doi: 10.1186/s12911-020-01340-6

Fig. 3.

Fig. 3

The overall framework of our proposed richer fusion network. (1) In terms of structured data, we extracted 29 representative features from EMR, which are closely related to breast cancer diagnosis in medical theory. We use a denoising autoencoder to increase the 29-dimensional vector to 580 dimensions. Different from the general way of adding noise, we randomly discard a certain feature of the input layer as a way to add noise. (2) In terms of pathological image, the feature maps of the third, fourth and fifth convolution layers were extracted from the VGG16 network (1280-dimensional) as richer feature representation; (3) Finally, the vector of 29D*20 dimensions extracted from the structured data was concatenated with the vector of 1280D dimensions extracted from the pathological images to form a vector of 1860D. This vector then goes through the next three full connection layers to get a classification result between benign and malignant breast cancer. The three full connection layers have 500, 100, and 2 nodes, respectively