TL;DR
This paper introduces a blockchain-federated learning framework utilizing deep learning and capsule networks to improve COVID-19 detection from CT scans while preserving patient data privacy across hospitals.
Contribution
It presents a novel privacy-preserving collaborative training framework combining blockchain and federated learning with a data normalization technique and capsule network segmentation.
Findings
Enhanced COVID-19 detection accuracy
Effective privacy preservation in multi-hospital data sharing
Utilization of real-world COVID-19 CT data
Abstract
With the increase of COVID-19 cases worldwide, an effective way is required to diagnose COVID-19 patients. The primary problem in diagnosing COVID-19 patients is the shortage and reliability of testing kits, due to the quick spread of the virus, medical practitioners are facing difficulty identifying the positive cases. The second real-world problem is to share the data among the hospitals globally while keeping in view the privacy concerns of the organizations. Building a collaborative model and preserving privacy are major concerns for training a global deep learning model. This paper proposes a framework that collects a small amount of data from different sources (various hospitals) and trains a global deep learning model using blockchain based federated learning. Blockchain technology authenticates the data and federated learning trains the model globally while preserving the…
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Taxonomy
MethodsConcatenated Skip Connection · Dense Block · 1x1 Convolution · Dense Connections · Dropout · Batch Normalization · Residual Connection · Softmax · *Communicated@Fast*How Do I Communicate to Expedia? · Bottleneck Residual Block
