Multi-limb Split Learning for Tumor Classification on Vertically Distributed Data
This addresses privacy-preserving medical diagnosis for hospitals, but it is incremental as it combines existing techniques in a new application.
The paper tackled brain tumor classification by implementing split learning with vertical distribution across hospitals, achieving train accuracy over 90% and test accuracy over 70%.
Brain tumors are one of the life-threatening forms of cancer. Previous studies have classified brain tumors using deep neural networks. In this paper, we perform the later task using a collaborative deep learning technique, more specifically split learning. Split learning allows collaborative learning via neural networks splitting into two (or more) parts, a client-side network and a server-side network. The client-side is trained to a certain layer called the cut layer. Then, the rest of the training is resumed on the server-side network. Vertical distribution, a method for distributing data among organizations, was implemented where several hospitals hold different attributes of information for the same set of patients. To the best of our knowledge this paper will be the first paper to implement both split learning and vertical distribution for brain tumor classification. Using both techniques, we were able to achieve train and test accuracy greater than 90\% and 70\%, respectively.