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Deep Transfer Learning Across Cancer Registries for Information Extraction from Pathology Reports. | LitMetric

AI Article Synopsis

  • Automated text extraction from cancer pathology reports is important for national cancer tracking, but creating versatile tools for different registries is challenging.
  • This study tested whether transfer learning using a convolutional neural network can help share knowledge between cancer registries.
  • The results showed that using transfer learning improved classification performance, particularly for less common cancer types, suggesting a more effective approach to information extraction across registries.

Article Abstract

Automated text information extraction from cancer pathology reports is an active area of research to support national cancer surveillance. A well-known challenge is how to develop information extraction tools with robust performance across cancer registries. In this study we investigated whether transfer learning (TL) with a convolutional neural network (CNN) can facilitate cross-registry knowledge sharing. Specifically, we performed a series of experiments to determine whether a CNN trained with single-registry data is capable of transferring knowledge to another registry or whether developing a cross-registry knowledge database produces a more effective and generalizable model. Using data from two cancer registries and primary tumor site and topography as the information extraction task of interest, our study showed that TL results in 6.90% and 17.22% improvement of classification macro F-score over the baseline single-registry models. Detailed analysis illustrated that the observed improvement is evident in the low prevalence classes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9450101PMC
http://dx.doi.org/10.1109/bhi.2019.8834586DOI Listing

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