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Brief Title: Quantitative Imaging Metrics From CECT in Measuring Disease Response or Progression in Patients With Kidney Cancer
Official Title: CT Metrology: Quantitative Imaging Metrics With Advanced Visualization Tools for Cancer Imaging
Study ID: NCT02370290
Brief Summary: This pilot research trial studies quantitative imaging metrics derived from contrast enhanced computed tomography (CECT) in enhancing assessment of disease status in patients with kidney cancer. Quantitative imaging is the extraction of quantifiable features from radiological images for the assessment of disease status. Collecting quantitative imaging metrics from CECT imaging may help doctors predict tumor aggressiveness and nuclear grade (tumor stage) and assess treatment response and prognosis in cancer imaging.
Detailed Description: PRIMARY OBJECTIVES: I. To investigate the role of quantitative imaging metrics (QIM) as a potential DIAGNOSTIC biomarker. II. To investigate if QIM parameters can differentiate clear cell renal cell carcinoma (RCC) from papillary RCC. III. To evaluate the tumor grade of the target lesion as assessed by QIM from CECT for agreement with the pathological (Fuhrman) grade. IV. To investigate the role of QIM as a potential PROGNOSTIC biomarker. V. To develop a novel method of calculating renal tumor contact surface area (CSA) using advanced image-processing technology (MATLAB®, 3 dimension \[D\] Synapse) and predict peri-operative variables such as blood loss, operative time and post-operative estimated glomerular filtration rate (eGFR) in patients undergoing partial nephrectomy (PN). VI. To develop QIM that would help in predicting postoperative functional outcomes such as predicted surgically resected volume and postoperative glomerular filtration rate (GFR). OUTLINE: Patients' clinical and imaging data are collected from routine multiphase CECT imaging and used to establish and validate the classification/prediction rule for QIM.
Minimum Age: 18 Years
Eligible Ages: ADULT, OLDER_ADULT
Sex: ALL
Healthy Volunteers: No
USC Norris Comprehensive Cancer Center, Los Angeles, California, United States
Name: Vinay Duddalwar
Affiliation: University of Southern California
Role: PRINCIPAL_INVESTIGATOR