Kidney Cancer Diagnosis and Surgery Selection by Machine Learning from CT Scans Combined with Clinical Metadata.
Sakib MahmudTariq O AbbasAdam MushtakJohayra PrithulaMuhammad Enamul Hoque ChowdhuryPublished in: Cancers (2023)
Kidney cancers are one of the most common malignancies worldwide. Accurate diagnosis is a critical step in the management of kidney cancer patients and is influenced by multiple factors including tumor size or volume, cancer types and stages, etc. For malignant tumors, partial or radical surgery of the kidney might be required, but for clinicians, the basis for making this decision is often unclear. Partial nephrectomy could result in patient death due to cancer if kidney removal was necessary, whereas radical nephrectomy in less severe cases could resign patients to lifelong dialysis or need for future transplantation without sufficient cause. Using machine learning to consider clinical data alongside computed tomography images could potentially help resolve some of these surgical ambiguities, by enabling a more robust classification of kidney cancers and selection of optimal surgical approaches. In this study, we used the publicly available KiTS dataset of contrast-enhanced CT images and corresponding patient metadata to differentiate four major classes of kidney cancer: clear cell (ccRCC), chromophobe (chRCC), papillary (pRCC) renal cell carcinoma, and oncocytoma (ONC). We rationalized these data to overcome the high field of view (FoV), extract tumor regions of interest (ROIs), classify patients using deep machine-learning models, and extract/post-process CT image features for combination with clinical data. Regardless of marked data imbalance, our combined approach achieved a high level of performance (85.66% accuracy, 84.18% precision, 85.66% recall, and 84.92% F1-score). When selecting surgical procedures for malignant tumors (RCC), our method proved even more reliable (90.63% accuracy, 90.83% precision, 90.61% recall, and 90.50% F1-score). Using feature ranking, we confirmed that tumor volume and cancer stage are the most relevant clinical features for predicting surgical procedures. Once fully mature, the approach we propose could be used to assist surgeons in performing nephrectomies by guiding the choices of optimal procedures in individual patients with kidney cancer.
Keyphrases
- computed tomography
- papillary thyroid
- machine learning
- contrast enhanced
- squamous cell
- deep learning
- renal cell carcinoma
- end stage renal disease
- chronic kidney disease
- big data
- dual energy
- magnetic resonance imaging
- minimally invasive
- magnetic resonance
- newly diagnosed
- electronic health record
- positron emission tomography
- artificial intelligence
- image quality
- ejection fraction
- stem cells
- childhood cancer
- young adults
- squamous cell carcinoma
- convolutional neural network
- coronary artery disease
- coronary artery bypass
- acute coronary syndrome
- optical coherence tomography
- anti inflammatory
- cell therapy