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Deep learning based classification of solid Lipid-poor contrast enhancing renal masses using contrast enhanced CT.

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Abstract

Establish a workflow that utilizes convolutional neural nets (CNN) to classify solid, lipid-poor, contrast enhancing renal masses using multiphase contrast enhanced CT (CECT) images and to assess the performance of the resulting network.
In this institutional review board approved study of 143 patients with predominantly solid, lipid-poor, contrast enhancing renal lesions (46 benign and 97 malignant), patients with a preoperative multiphase CECT of the abdomen and pelvis obtained between June 2009 and June 2015 were retrospectively queried. Benign renal masses included oncocytoma and lipid-poor angiomyolipoma and the malignant group included clear cell, papillary, and chromophobe carcinomas.Region of interests of whole tumor volumes were manually segmented, and CT Phase images with the largest cross-section of the segmented tumor in the axial plane were used for assessment. Post-surgical pathological evaluation was used to establish diagnosis.The segmented images of renal masses were used as input to a CNN. The data was augmented and split into training (83.9%) and validation sets (16.1%) to determine the hyperparameters of the CNN. Thereafter. the performance of the resulting CNN was quantified using 8-fold cross-validation.
The CNN-based classifier demonstrated an overall accuracy of 78% (95% CI: 76-80%), sensitivity of 70% (95% CI: 66-74%), specificity of 81% (79-83%) and an AUC of 0.82.
A CNN-based classifier to diagnose solid enhancing malignant renal masses based on multiphase CECT images was developed.
It was established that a CNN-based classifier could be trained to accurately distinguish malignant renal lesions.

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