Abstract

ObjectiveTo develop a machine learning (ML)-based classifier for discriminating between low-grade (ISUP I-II) and high-grade (ISUP III-IV) clear cell renal cell carcinomas (ccRCCs) using MRI textures.Materials and MethodsWe retrospectively evaluated a total of 99 patients (with 61 low-grade and 38 high-grade ccRCCs), who were randomly divided into a training set (n = 70) and a validation set (n = 29). Regions of interest (ROIs) of all tumors were manually drawn three times by a radiologist at the maximum lesion level of the cross-sectional CMP sequence images. The quantitative texture analysis software, MaZda, was used to extract texture features, including histograms, co-occurrence matrixes, run-length matrixes, gradient models, and autoregressive models. Reproducibility of the texture features was assessed with the intra-class correlation coefficient (ICC). Features were chosen based on their importance coefficients in a random forest model, while the multi-layer perceptron algorithm was used to build a classifier on the training set, which was later evaluated with the validation set.ResultsThe ICCs of 257 texture features were equal to or higher than 0.80 (0.828–0.998. Six features, namely Kurtosis, 135dr_RLNonUni, Horzl_GLevNonU, 135dr_GLevNonU, S(4,4)Entropy, and S(0,5)SumEntrp, were chosen to develop the multi-layer perceptron classifier. A three-layer perceptron model, which has 229 nodes in the hidden layer, was trained on the training set. The accuracy of the model was 95.7% with the training set and 86.2% with the validation set. The areas under the receiver operating curves were 0.997 and 0.758 for the training and validation sets, respectively.ConclusionsA machine learning-based grading model was developed that can aid in the clinical diagnosis of clear cell renal cell carcinoma using MRI images.

Highlights

  • Renal cell carcinoma (RCC) is the most common malignant kidney tumor, and the most common pathological type, accounting for 70–90%, is clear cell renal cell carcinoma [1]

  • Materials and Methods: We retrospectively evaluated a total of 99 patients, who were randomly divided into a training set (n = 70) and a validation set (n = 29)

  • A machine learning-based grading model was developed that can aid in the clinical diagnosis of clear cell renal cell carcinoma using magnetic resonance imaging (MRI) images

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Summary

Introduction

Renal cell carcinoma (RCC) is the most common malignant kidney tumor, and the most common pathological type, accounting for 70–90%, is clear cell renal cell carcinoma (ccRCC) [1]. The pathological features of renal masses are frequently evaluated by preoperative percutaneous renal biopsy, but this invasive technique still suffers from low accuracy. This has prompted a search for non-invasive methods that can grade the tumors and aid clinicians in selecting optimal therapeutic regimens. Artificial intelligence can play an important role in interpreting MRI information in comprehensive ways by texture analysis In this way, MRI images can provide quantitative statistical parameters by identifying subtle texture information not readily observable with the human eye [8]. The purpose of this study was to explore the value of using MRI textures and machine learning algorithms for predicting the grade of ccRCCs before operations

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