An Empowered Transfer Learning Model for Predictive Classification of Lung Cancer

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Abstract

Lung cancer detection and treatment is processed using upgraded medical tools and radiology experts from multiple medical data sources. The challenge in decision making is dependent on experts understanding on a given electronic health records or datasets. In this paper, we have proposed an improvised approach of lung cancer classification based on intensity driven RoI selection from the Lung Images Database Consortium Image Collection (LIDC-IDRI), Cancer Imaging Archive (CIA) datasets. The technique is developed on label customization and annotating the vulnerable RoI regions. The approach is optimized for higher dimensionality mapping of RoIs. The technique deploys a feedback-based upgrading and monitoring approach via transfer learning framework. The trained dataset from RoI optimizer is updated to customized learning models for decision transfer and decision-making capabilities. The proposed technique is deployed on CoVNET framework and has demonstrated the accuracy of 97.84% under a 60:40 training testing-based learning model.

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