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Here you can browse the complete list of projects on CDAS whose requests for data/biospecimens were approved.

Name Principal Investigator Institution Study Date Approved Project ID
Associations of Dietary Inflammatory and Insulinemic Potential with Risk of Cancer Development Fred Tabung The Ohio State University College of Medicine PLCO Nov 25, 2019 PLCO-553
Evaluating the Impact of Preoperative Characteristics on Outcomes of Patients Undergoing Curative-intent Treatment in the NLST Chi-Fu Yang Stanford NLST Nov 25, 2019 NLST-607
Deep learning models to predict lung cancer malignancy Yufeng Deng Infervision US Inc. NLST Nov 25, 2019 NLST-604
Association of endogenous estrogens, estrogen metabolites, androgens and androgen metabolites with Ovarian Cancer Britton Trabert NIH PLCO Nov 21, 2019 2016-0047
Use of Radiomics and AI To Predict Malignancy in Indeterminate Lung Nodules Richard Lee The Royal Marsden Hospital NLST Nov 19, 2019 NLST-593
Optimizing Lung Cancer Early Detection by LDCT via Computer Vision Kingshuk Das AnimanDx Inc NLST Nov 14, 2019 NLST-602
Validating automated algorithms for detection of lung pathology Atilla Kiraly Google NLST Nov 13, 2019 NLST-559
Machine Learning Application of Cancer Data Analysis Mochen Li Purdue University PLCO Nov 13, 2019 PLCO-552
Computer-Aided Diagnostic System for Lung Nodule Detection, Localization, Attribution, and Classification using Deep Learning Devon Bernard Hive Medical NLST Nov 13, 2019 NLST-601
Variability of Observer Interpretations and Lung-RADS Assignment Devon Bernard Hive Medical NLST Nov 13, 2019 NLST-600
Lung cancer CT screening efficacy beyond the NLST screening period Anton Schreuder Radboudumc NLST Nov 13, 2019 NLST-598
Using Region based Convolutional Neural Networks (RCNNs) and its variants to detect, classify, segment and predict lung cancer signatures from NLST data Pratik Shah Massachusetts Institute of Technology NLST Nov 13, 2019 NLST-599
Minibatch Gradient Descent Method for Deep Survival Analysis James Sharpnack University of California-Davis NLST Nov 7, 2019 NLST-597
Integrating AI into workflow akio iwase NucleusHealth PLCO Nov 4, 2019 PLCOI-542
Exascale Deep Learning for screening based predictive modeling for lung cancer Greeshma Agasthya Oak Ridge National Laboratory PLCO Nov 4, 2019 PLCOI-544
Incorporating Biomarkers to Improve Lung Cancer Risk Prediction Samir Hanash University of Texas at MD Anderson PLCO Nov 4, 2019 PLCO-549
Extended Cancer Prediction from Lung CT Images Atilla Kiraly Google NLST Nov 1, 2019 NLST-594
Individual lung cancer survival estimation based on radiomics analysis Yujiao Wu University of Technology Sydney NLST Oct 31, 2019 NLST-596
use active learning to do the tumor segmentation. Sijie Wang the university of Tokyo NLST Oct 31, 2019 NLST-595
Colorectal cancer risk factors, risk prediction and blood-based biomarker by tumor consensus molecular subtype Jennifer Davis University of Kansas Medical Center PLCO Oct 29, 2019 2018-0009