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Split Learning for Healthcare and Threats to Decentralized Learning

This project was done under the guidance of Dr. Vinay Chamola, BITS Pilani, as part of the course EEE F376 in the Second Semester of AY 22-23.

Brief Description

Split Learning is a type of decentralized neural network training, wherein after a certain 'cut layer' in the network, client networks share only their activations with the server network, without having to share sensitive data, such as medical records or images. The server proceeds with the remaining calculations and shares the gradients back with the client to finish the training loop.

In this project, we explored three aspects of Split learning. First, we implemented a Split Resnet-34 network and experimented with the number of clients and the cut layer to observe its effects on task performance. Next, we conceptualized and implemented a Split U-Net for semantic segmentation of Chest X-ray images. Finally, we implemented two threat models to Split Learning, wherein malicious actors try to reconstruct the input data from the client networks' activations, and the corresponding defensive techniques.

The code is accordingly organized.

1. Split Resnet-34 and Experiments

Dataset: Diabetic Retinopathy (Retinal Images; 2-class classification)

Model Details:

  • Resnet-34
  • 1000 train images, 200 test images
  • Epochs = 20
  • Cut_Layer = 3 (default)
  • Number of Clients = 2 (default)
  • learning rate: 0.001
  • Loss Function: Cross-Entropy Loss
  • Optimizer: Adam (lr = 0.01)

The successive activations of the client model, starting with the input image up to the data shared with the server network.

Experiments:

  • Vary Cut-Layer (2, 3, 5, 7) to observe differences in test accuracies
  • Vary Number of Clients (1, 2, 3, 4, 6) to observe differences in test accuracies

The training loss of two client networks as the cut-layer is varied.

2. Split U-Net and Semantic Segmentation

Dataset: Lung Segmentation from Chest X-rays (Semantic Segmentation)

Model Details:

  • U-Net
  • 1000 train images, 200 test images
  • Epochs = 20
  • Cut_Layer = 3 (default)
  • Number of Clients = 1 (default)
  • learning rate: 0.001
  • Loss Function: Dice Loss
  • Optimizer: Adam (lr = 0.01)

In this paradigm, we have four networks: The Client Encoder, Server Encoder, Server Decoder, and the Client Decoder. It follows the same principle as the Split Resnet, however, the activations are simply passed on twice, and so too are the gradients. In other words, it is simply an extension of the Split Resnet in both directions.

An example of the semantic segmentation of Chest X-rays by the Split U-Net.

Observing the loss, accuracies and Jaccard coefficients during the training loop of Split U-Nets by varying the cut-layer.

3. Threat Models and Defensive Techniques

We implemented the following Threat Models and the respective defensive techniques:

The reconstruction of the input images by an adversarial network.

Using a Proxy adversarial network as a defensive measure while training, the malicious server is unable to successfully recreate the input image!