This application's broad, long-term objective is to lessen the disease burden of breast cancer by detecting it at an early and curable stage and by reducing the number of biopsies on benign lesions. Computer-aided diagnosis (CAD) refers to a diagnostic process in which a radiologist uses a computer analysis of a mammogram as a diagnostic aid to achieve more accurate interpretation. The hypothesis to be tested is that with optimization and clinical trial, CAD methods that classify breast lesions as malignant or benign can be used clinically.
The specific aims of this application are: (1) To compare two computer classification methods: one based on image features extracted by a computer and one based on the Breast Imaging Report and Data System (BI-RADS) lesion descriptors provided by radiologists; (2) To develop optimal strategies for radiologists to combine their diagnostic assessment with that of the computer; (3) To carry out a Phase II clinical trial and to plan a Phase III clinical trial. The significance and health-relatedness of CAD for breast lesion classification is that it can potentially help radiologists reduce the number of biopsies on benign lesions while maintaining or increasing the sensitivity of mammography. The significance and health-relatedness of this project is that it will increase clinical effectiveness of CAD through optimization, move CAD from laboratory research to clinical evaluation, and start a clinical trial process that will ultimately determine CAD's clinical efficacy. The research design is to optimize previously developed CAD methods and then to conduct a Phase II clinical trial. The methods to be used include lesion feature analysis, artif aboutcial neural networks (ANNs), receiver operating characteristic (ROC) analysis, observer study, mathematical modeling with respect to ideal observer performance, and Monte Carlo simulation.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA092361-05
Application #
7027000
Study Section
Diagnostic Radiology Study Section (RNM)
Program Officer
Croft, Barbara
Project Start
2002-04-01
Project End
2008-03-31
Budget Start
2006-04-28
Budget End
2008-03-31
Support Year
5
Fiscal Year
2006
Total Cost
$297,126
Indirect Cost
Name
University of Chicago
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
005421136
City
Chicago
State
IL
Country
United States
Zip Code
60637
Shang, Hua; Jiang, Yulei; Li, Feng et al. (2016) ROC Curve for Extremely Subtle Lung Nodules on Chest Radiographs Confirmed by CT Scan. Acad Radiol 23:297-303
Shimauchi, Akiko; Abe, Hiroyuki; Schacht, David V et al. (2015) Evaluation of Kinetic Entropy of Breast Masses Initially Found on MRI using Whole-lesion Curve Distribution Data: Comparison with the Standard Kinetic Analysis. Eur Radiol 25:2470-8
Zhang, Hao; Wroblewski, Kristen; Jiang, Yulei et al. (2015) A new PET/CT volumetric prognostic index for non-small cell lung cancer. Lung Cancer 89:43-9
Zur, Richard M; Pesce, Lorenzo L; Jiang, Yulei (2015) Estimating screening-mammography receiver operating characteristic (ROC) curves from stratified random samples of screening mammograms: a simulation study. Acad Radiol 22:580-90
Schmid-Tannwald, Christine; Jiang, Yulei; Dahi, Farid et al. (2013) Diffusion-weighted MR imaging of focal liver lesions in the left and right lobes: is there a difference in ADC values? Acad Radiol 20:440-5
Peng, Yahui; Jiang, Yulei; Yang, Cheng et al. (2013) Quantitative analysis of multiparametric prostate MR images: differentiation between prostate cancer and normal tissue and correlation with Gleason score--a computer-aided diagnosis development study. Radiology 267:787-96
Liu, Bei; Jiang, Yulei (2013) A multitarget training method for artificial neural network with application to computer-aided diagnosis. Med Phys 40:011908
Jiang, Yulei (2013) On the shape of the population ROC curve. Acad Radiol 20:897-907
Soylu, Fatma Nur; Peng, Yahui; Jiang, Yulei et al. (2013) Seminal vesicle invasion in prostate cancer: evaluation by using multiparametric endorectal MR imaging. Radiology 267:797-806
Horsch, Karla; Pesce, Lorenzo L; Giger, Maryellen L et al. (2012) A scaling transformation for classifier output based on likelihood ratio: applications to a CAD workstation for diagnosis of breast cancer. Med Phys 39:2787-804

Showing the most recent 10 out of 25 publications