Abstract

BackgroundComputer-assisted diagnosis (CAD) systems for bone scans have been introduced as clinical quality assurance tools, but few studies have reported on its utility for renal cell carcinoma (RCC) patients. The aim of this study was to assess the diagnostic validity of the CAD system for bone scans and to construct a novel diagnostic system for bone metastases in RCC patients.MethodsWe evaluated bone scan images of 300 RCC patients. Artificial neural network (ANN) values, which represent the probability of abnormality, were calculated by BONENAVI, the CAD software for bone scans. By analyzing ANN values, we assessed the diagnostic validity of BONENAVI. Next, we selected 108 patients who underwent measurements of bone turnover markers and assessed the combined diagnostic validity of BONENAVI and bone turnover markers.ResultsForty-three out of 300 RCC patients had bone metastases. The AUC of ANN values was 0.764 and the optimum sensitivity and specificity were 83.7 and 62.7%. By logistic analysis of 108 cases, we found that ICTP, a bone resorption marker, could be a diagnostic marker. The AUC of ICTP was 0.776 and the optimum sensitivity and specificity were 57.1 and 86.8%. Subsequently, we developed a novel diagnostic model based on ANN values and ICTP. Using this model, the AUC was 0.849 and the optimum sensitivity and specificity were 76.2 and 80.7%.ConclusionBy combining the high sensitivity provided by BONENAVI and the high specificity provided by ICTP, we constructed a novel, high-accuracy diagnostic model for bone metastases in RCC patients.

Highlights

  • Bone metastases are found in approximately 30% of advanced renal cell carcinoma (RCC) patients, representing the second-most common site of distant metastasis [1, 2]

  • The aim of this study was to assess the diagnostic validity of the Computer-assisted diagnosis (CAD) system for bone scans and bone turnover markers, and to develop a novel diagnostic model for bone metastases in RCC patients

  • By combining the high sensitivity provided by Artificial neural network (ANN) values and the high specificity provided by ICTP levels, we attempted to construct a novel, high-accuracy diagnostic model for bone metastases in RCC patients

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Summary

Introduction

Bone metastases are found in approximately 30% of advanced renal cell carcinoma (RCC) patients, representing the second-most common site of distant metastasis (following lung) [1, 2]. Because such lesions profoundly impact quality of life and survival [3], early diagnosis of bone metastases is clinically important. There are many reports that the CAD system is useful for both diagnosis and prognostic prediction with respect to prostate cancer exhibiting osteogenic bone metastasis [7,8,9]. The aim of this study was to assess the diagnostic validity of the CAD system for bone scans and bone turnover markers, and to develop a novel diagnostic model for bone metastases in RCC patients

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