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Dive into the research topics where Claudia I. Henschke is active.

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Featured researches published by Claudia I. Henschke.


Medical Imaging 2018: Computer-Aided Diagnosis | 2018

Fully automated gynecomastia quantification from low-dose chest CT.

Shuang Liu; Emily B. Sonnenblick; Lea Azour; David F. Yankelevitz; Claudia I. Henschke; Anthony P. Reeves

Gynecomastia is characterized by the enlargement of male breasts, which is a common and sometimes distressing condition found in over half of adult men over the age of 44. Although the majority of gynecomastia is physiologic or idiopathic, its occurrence may also associate with an extensive variety of underlying systemic disease or drug toxicity. With the recent large-scale implementation of annual lung cancer screening using low-dose chest CT (LDCT), gynecomastia is believed to be a frequent incidental finding on LDCT. A fully automated system for gynecomastia quantification from LDCT is presented in this paper. The whole breast region is first segmented using an anatomyorientated approach based on the propagation of pectoral muscle fronts in the vertical direction. The subareolar region is then localized, and the fibroglandular tissue within it is measured for the assessment of gynecomastia. The presented system was validated using 454 breast regions from non-contrast LDCT scans of 227 adult men. The ground truth was established by an experienced radiologist by classifying each breast into one of the five categorical scores. The automated measurements have been demonstrated to achieve promising performance for the gynecomastia diagnosis with the AUC of 0.86 for the ROC curve and have statistically significant Spearman correlation r=0.70 (p < 0.001) with the reference categorical grades. The encouraging results demonstrate the feasibility of fully automated gynecomastia quantification from LDCT, which may aid the early detection as well as the treatment of both gynecomastia and the underlying medical problems, if any, that cause gynecomastia.


Medical Imaging 2018: Computer-Aided Diagnosis | 2018

Fully automated bone mineral density assessment from low-dose chest CT.

Shuang Liu; Jessica Gonzalez; Javier J. Zulueta; Juan P. de-Torres; David F. Yankelevitz; Claudia I. Henschke; Anthony P. Reeves

A fully automated system is presented for bone mineral density (BMD) assessment from low-dose chest CT (LDCT). BMD assessment is central in the diagnosis and follow-up therapy monitoring of osteoporosis, which is characterized by low bone density and is estimated to affect 12.3 million US population aged 50 years or older, creating tremendous social and economic burdens. BMD assessment from DXA scans (BMDDXA) is currently the most widely used and gold standard technique for the diagnosis of osteoporosis and bone fracture risk estimation. With the recent large-scale implementation of annual lung cancer screening using LDCT, great potential emerges for the concurrent opportunistic osteoporosis screening. In the presented BMDCT assessment system, each vertebral body is first segmented and labeled with its anatomical name. Various 3D region of interest (ROI) inside the vertebral body are then explored for BMDCT measurements at different vertebral levels. The system was validated using 76 pairs of DXA and LDCT scans of the same subject. Average BMDDXA of L1-L4 was used as the reference standard. Statistically significant (p-value < 0.001) strong correlation is obtained between BMDDXA and BMDCT at all vertebral levels (T1 – L2). A Pearson correlation of 0.857 was achieved between BMDDXA and average BMDCT of T9-T11 by using a 3D ROI taking into account of both trabecular and cortical bone tissue. These encouraging results demonstrate the feasibility of fully automated quantitative BMD assessment and the potential of opportunistic osteoporosis screening with concurrent lung cancer screening using LDCT.


Radiology | 2004

Lung Image Database Consortium: Developing a Resource for the Medical Imaging Research Community

Samuel G. Armato; Geoffrey McLennan; Michael F. McNitt-Gray; Charles R. Meyer; David Yankelevitz; Denise R. Aberle; Claudia I. Henschke; Eric A. Hoffman; Ella A. Kazerooni; Heber MacMahon; Anthony P. Reeves; Barbara Y. Croft; Laurence P. Clarke


Archive | 2006

Medical imaging system for accurate measurement evaluation of changes in a target lesion

David F. Yankelevitz; Anthony P. Reeves; Claudia I. Henschke


Archive | 2004

System and method for providing remote analysis of medical data

Anthony P. Reeves; David Yankelevitz; Claudia I. Henschke


Archive | 2011

Medical imaging system for accurate measurement evaluation of changes

David F. Yankelevitz; Anthony P. Reeves; Claudia I. Henschke


Archive | 2015

cT s creening for l ung cancer: Nonsolid Nodules in Baseline and

David F. Yankelevitz; Rowena Yip; James P. Smith; Mingzhu Liang; Ying Liu; Dong Ming Xu; Mary Salvatore; Andrea Wolf; Raja M. Flores; Claudia I. Henschke


Personalized Management of Lung Cancer | 2013

Screening and risk factors

Claudia I. Henschke; James P. Smith; David F. Yankelevitz; Rowena Yip


Archive | 2008

EARLY DETECTION AND SCREENING OF LUNG CANCER

Robert J. Korst; David F. Yankelevitz; Claudia I. Henschke; Nasser K. Altorki


Archive | 2007

A Comparison of Different Size Metrics for Pulmonary Nodule Measurements 1

Anthony P. Reeves; Alberto M. Biancardi; Tatiyana V. Apanasovich; Charles R. Meyer; Heber Macmahon; Ella A. Kazerooni; David Yankelevitz; Michael F. McNitt-Gray; Geoffrey McLennan; Samuel G. Armato; Claudia I. Henschke; Denise R. Aberle; Barbara Y. Croft; Laurence P. Clarke

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Laurence P. Clarke

National Institutes of Health

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