Kidney abnormality segmentation in thorax-abdomen CT scans

In this study, we introduce a deep learning approach for segmenting kidney parenchyma and kidney abnormalities to support clinicians in identifying and quantifying renal abnormalities such as cysts, lesions, masses, metastases, and primary tumors. Our end-to-end segmentation method was trained on 215 contrast-enhanced thoracic-abdominal CT scans, with half of these scans containing one or more abnormalities. We began by implementing our own version of the original 3D U-Net network and incorporated four additional components: an end-to-end multi-resolution approach, a set of task-specific data augmentations, a modified loss function using top-k, and spatial dropout. Furthermore, we devised a tailored post-processing strategy. Ablation studies demonstrated that each of the four modifications enhanced kidney abnormality segmentation performance, while three out of four improved kidney parenchyma segmentation. Subsequently, we trained the nnUNet framework on our dataset. By ensembling the optimized 3D U-Net and the nnUNet with our specialized post-processing, we achieved marginally superior results. Our best-performing model attained Dice scores of 0.965 and 0.947 for segmenting kidney parenchyma in two test sets (20 scans without abnormalities and 30 with abnormalities), outperforming an independent human observer who scored 0.944 and 0.925, respectively. In segmenting kidney abnormalities within the 30 test scans containing them, the top-performing method achieved a Dice score of 0.585, while an independent second human observer reached a score of 0.664, suggesting potential for further improvement in computerized methods. All training data is available to the research community under a CC-BY 4.0 license on https://doi.org/10.5281/zenodo.8014289

READ FULL TEXT
research
12/26/2022

Kidney and Kidney Tumour Segmentation in CT Images

Automatic segmentation of kidney and kidney tumour in Computed Tomograph...
research
09/13/2021

Leveraging Clinical Characteristics for Improved Deep Learning-Based Kidney Tumor Segmentation on CT

This paper assesses whether using clinical characteristics in addition t...
research
09/22/2022

A CT-Based Airway Segmentation Using U^2-net Trained by the Dice Loss Function

Airway segmentation from chest computed tomography scans has played an e...
research
10/09/2022

Improved Abdominal Multi-Organ Segmentation via 3D Boundary-Constrained Deep Neural Networks

Quantitative assessment of the abdominal region from clinically acquired...
research
08/17/2022

Auto-segmentation of Hip Joints using MultiPlanar UNet with Transfer learning

Accurate geometry representation is essential in developing finite eleme...
research
11/23/2020

Planar 3D Transfer Learning for End to End Unimodal MRI Unbalanced Data Segmentation

We present a novel approach of 2D to 3D transfer learning based on mappi...
research
08/19/2022

Ensemble uncertainty as a criterion for dataset expansion in distinct bone segmentation from upper-body CT images

Purpose: The localisation and segmentation of individual bones is an imp...

Please sign up or login with your details

Forgot password? Click here to reset