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Segmentation of ADPKD Computed Tomography Images with Deep Learning Approach for Predicting Total Kidney Volume

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Journal Biomedicines
Date 2025 Feb 26
PMID 40002677
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Abstract

Total Kidney Volume (TKV) is widely used globally to predict the progressive loss of renal function in patients with Autosomal Dominant Polycystic Kidney Disease (ADPKD). Typically, TKV is calculated using Computed Tomography (CT) images by manually locating, delineating, and segmenting the ADPKD kidneys. However, manual localization and segmentation are tedious, time-consuming tasks and are prone to human error. Specifically, there is a lack of studies that focus on CT modality variation. In contrast, our work develops a step-by-step framework, which robustly handles both Non-enhanced Computed Tomography (NCCT) and Contrast-enhanced Computed Tomography (CCT) images, ensuring balanced sample utilization and consistent performance across modalities. To achieve this, Artificial Intelligence (AI)-enabled localization and segmentation models are proposed for estimating TKV, which is designed to work robustly on both NCCT and Contrast-Computed Tomography (CCT) images. These AI-based models incorporate various image preprocessing techniques, including dilation and global thresholding, combined with Deep Learning (DL) approaches such as the adapted Single Shot Detector (SSD), Inception V2, and DeepLab V3+. The experimental results demonstrate that the proposed AI-based models outperform other DL architectures, achieving a mean Average Precision (mAP) of 95% for automatic localization, a mean Intersection over Union (mIoU) of 92% for segmentation, and a mean R2 score of 97% for TKV estimation. These results clearly indicate that the proposed AI-based models can robustly localize and segment ADPKD kidneys and estimate TKV using both NCCT and CCT images.

References
1.
Sahoo P, Gupta P, Lai Y, Chiang S, You J, Onthoni D . Localization of Colorectal Cancer Lesions in Contrast-Computed Tomography Images via a Deep Learning Approach. Bioengineering (Basel). 2023; 10(8). PMC: 10451186. DOI: 10.3390/bioengineering10080972. View

2.
Onthoni D, Sheng T, Sahoo P, Wang L, Gupta P . Deep Learning Assisted Localization of Polycystic Kidney on Contrast-Enhanced CT Images. Diagnostics (Basel). 2020; 10(12). PMC: 7767504. DOI: 10.3390/diagnostics10121113. View

3.
Bevilacqua V, Brunetti A, Cascarano G, Guerriero A, Pesce F, Moschetta M . A comparison between two semantic deep learning frameworks for the autosomal dominant polycystic kidney disease segmentation based on magnetic resonance images. BMC Med Inform Decis Mak. 2019; 19(Suppl 9):244. PMC: 6907104. DOI: 10.1186/s12911-019-0988-4. View

4.
Gupta P, Huang Y, Sahoo P, You J, Chiang S, Onthoni D . Colon Tissues Classification and Localization in Whole Slide Images Using Deep Learning. Diagnostics (Basel). 2021; 11(8). PMC: 8394415. DOI: 10.3390/diagnostics11081398. View

5.
Kline T, Edwards M, Fetzer J, Gregory A, Anaam D, Metzger A . Automatic semantic segmentation of kidney cysts in MR images of patients affected by autosomal-dominant polycystic kidney disease. Abdom Radiol (NY). 2020; 46(3):1053-1061. PMC: 7940295. DOI: 10.1007/s00261-020-02748-4. View