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A deep learning-based precision volume calculation approach for kidney and tumor segmentation on computed tomography images

Chiu‐Han Hsiao, Tzu-Lung Sun, Ping-Cherng Lin, Tsung-Yu Peng, Yu‐Hsin Chen, Chieh-Yun Cheng, Feng‐Jung Yang, Shao‐Yu Yang, Chih‐Horng Wu, Frank Yeong‐Sung Lin, Yennun Huang

2022Computer Methods and Programs in Biomedicine31 citationsDOIOpen Access PDF

Abstract

Previously, doctors interpreted computed tomography (CT) images based on their experience in diagnosing kidney diseases. However, with the rapid increase in CT images, such interpretations were required considerable time and effort, producing inconsistent results. Several novel neural network models were proposed to automatically identify kidney or tumor areas in CT images for solving this problem. In most of these models, only the neural network structure was modified to improve accuracy. However, data pre-processing was also a crucial step in improving the results. This study systematically discussed the necessary pre-processing methods before processing medical images in a neural network model. The experimental results were shown that the proposed pre-processing methods or models significantly improve the accuracy rate compared with the case without data pre-processing. Specifically, the dice score was improved from 0.9436 to 0.9648 for kidney segmentation and 0.7294 for all types of tumor detections. The performance was suitable for clinical applications with lower computational resources based on the proposed medical image processing methods and deep learning models. The cost efficiency and effectiveness were also achieved for automatic kidney volume calculation and tumor detection accurately.

Topics & Concepts

Computer scienceArtificial intelligenceSegmentationArtificial neural networkVolume (thermodynamics)Image processingDeep learningDiceComputed tomographyMedical imagingPattern recognition (psychology)Image segmentationImage (mathematics)Computer visionRadiologyMedicineMathematicsPhysicsGeometryQuantum mechanicsRadiomics and Machine Learning in Medical ImagingAdvanced Neural Network ApplicationsAI in cancer detection
A deep learning-based precision volume calculation approach for kidney and tumor segmentation on computed tomography images | Litcius