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2017 | OriginalPaper | Chapter

Discovery Radiomics for Pathologically-Proven Computed Tomography Lung Cancer Prediction

Authors : Devinder Kumar, Audrey G. Chung, Mohammad J. Shaifee, Farzad Khalvati, Masoom A. Haider, Alexander Wong

Published in: Image Analysis and Recognition

Publisher: Springer International Publishing

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Abstract

Lung cancer is the leading cause for cancer related deaths. As such, there is an urgent need for a streamlined process that can allow radiologists to provide diagnosis with greater efficiency and accuracy. A powerful tool to do this is radiomics: a high-dimension imaging feature set. In this study, we take the idea of radiomics one step further by introducing the concept of discovery radiomics for lung cancer prediction using CT imaging data. In this study, we realize these custom radiomic sequencers as deep convolutional sequencers using a deep convolutional neural network learning architecture. To illustrate the prognostic power and effectiveness of the radiomic sequences produced by the discovered sequencer, we perform cancer prediction between malignant and benign lesions from 97 patients using the pathologically-proven diagnostic data from the LIDC-IDRI dataset. Using the clinically provided pathologically-proven data as ground truth, the proposed framework provided an average accuracy of 77.52% via 10-fold cross-validation with a sensitivity of 79.06% and specificity of 76.11%, surpassing the state-of-the art method.

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Metadata
Title
Discovery Radiomics for Pathologically-Proven Computed Tomography Lung Cancer Prediction
Authors
Devinder Kumar
Audrey G. Chung
Mohammad J. Shaifee
Farzad Khalvati
Masoom A. Haider
Alexander Wong
Copyright Year
2017
DOI
https://doi.org/10.1007/978-3-319-59876-5_7

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