Dr. Maryellen L. Giger
A. N. Pritzker Professor Radiology/Medical Physics at The Univ. of Chicago
SPIE Involvement:
Membership & Communities Committee | Board of Directors | Conference Program Committee | Conference Chair | Editorial Board Member: Journal of Medical Imaging | Author | Editor | Instructor | Startup Challenge Judge
Area of Expertise:
computer-aided diagnosis , computerized lesion detection , digital medical imaging , quantitative image analysis , reader/observer ROC studies , digital image analysis
Publications (223)

SPIE Journal Paper | 26 December 2024 Open Access
JMI, Vol. 11, Issue 06, 064503, (December 2024) https://doi.org/10.1117/12.10.1117/1.JMI.11.6.064503
KEYWORDS: Data modeling, Performance modeling, Education and training, COVID 19, Chest imaging, Deep learning, Reverse modeling, Medicine, Radiography, Overfitting

SPIE Journal Paper | 10 December 2024 Open Access
Madeleine Torcasso, Junting Ai, Gabriel Casella, Thao Cao, Anthony Chang, Ariel Halper-Stromberg, Bana Jabri, Marcus Clark, Maryellen Giger
JMI, Vol. 11, Issue 06, 067502, (December 2024) https://doi.org/10.1117/12.10.1117/1.JMI.11.6.067502
KEYWORDS: Image classification, Image segmentation, Kidney, Biological imaging, Biological samples, Multiplexing, Tissues, Decision trees, Biopsy, Data modeling

SPIE Journal Paper | 12 September 2024 Open Access
JMI, Vol. 11, Issue 05, 054501, (September 2024) https://doi.org/10.1117/12.10.1117/1.JMI.11.5.054501
KEYWORDS: Radiomics, Magnetic resonance imaging, Analog to digital converters, Principal component analysis, Cooccurrence matrices, Volume rendering, Tumors, Hazard analysis, Ultrasonography, Tissues

SPIE Journal Paper | 6 August 2024 Open Access
JMI, Vol. 11, Issue 04, 044505, (August 2024) https://doi.org/10.1117/12.10.1117/1.JMI.11.4.044505
KEYWORDS: Image segmentation, Ultrasonography, Tissues, Education and training, Ovarian cancer, Radiomics, Pathology, Tumor growth modeling, Feature extraction, Solids

Proceedings Article | 29 May 2024 Paper
Proceedings Volume 13174, 131741N (2024) https://doi.org/10.1117/12.3027037
KEYWORDS: Breast cancer, Radiomics, Medical imaging, Breast, Machine learning

Showing 5 of 223 publications
Proceedings Volume Editor (4)

SPIE Conference Volume | 29 May 2024

SPIE Conference Volume | 27 February 2009

SPIE Conference Volume | 11 April 2008

SPIE Conference Volume | 8 March 2007

Conference Committee Involvement (26)
Computer-Aided Diagnosis
17 February 2025 | San Diego, California, United States
17th International Workshop on Breast Imaging (IWBI 2024)
9 June 2024 | Chicago, IL, United States
Computer-Aided Diagnosis
19 February 2024 | San Diego, California, United States
Computer-Aided Diagnosis
20 February 2023 | San Diego, California, United States
Computer-Aided Diagnosis
21 February 2022 | San Diego, California, United States
Showing 5 of 26 Conference Committees
Course Instructor
SC356: Digital Mammography and Computer-Aided Diagnosis
The term Digital Mammography refers to the technology that is used for the electronic capture and display of x-ray images of the breast. In this process, film is not essential but it may be used as a recording medium for viewing and storing digital mammographic images. The various digital mammographic technologies are reviewed with emphasis on detector design and acquisition approach. These technologies include flat panel detectors using amorphous silicon detector arrays with a scintillator, flat panel amorphous selenium, stimulable phosphors, and slot scanning techniques using charge-coupled devices. Recent progress on advanced applications, such as tomographic and 3-D imaging of the breast, is presented. The interpretation of breast images can benefit from computer technology with advances in CAD. Computer-aided diagnosis (CAD) can be defined as a diagnosis made by a radiologist who uses the output from a computerized analysis of medical images as a second opinion in detecting lesions and in making diagnostic decisions. The final diagnosis is made by the radiologist. Rationale, computerized image analysis methods, and evaluation of performance of multi-modality CAD in the detection, diagnosis, and risk assessment of breast cancer will be reviewed.
SC882: Computer-Aided Diagnosis
The interpretation of medical images is expected to benefit from computer technology with advances in CAD. Computer-aided diagnosis (CAD) can be defined as a diagnosis made by a radiologist who uses the output from a computerized analysis of medical images as a second opinion in detecting lesions and in making diagnostic decisions. The final diagnosis is made by the radiologist. Rationale, computerized image analysis methods, evaluation methods, and translational clinical studies of CAD in the detection, diagnosis, and risk assessment of cancer will be reviewed. Specific examples will be presented in breast imaging, thoracic imaging, and colonography.
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