Search

Your search keyword '"Gandomkar, Ziba"' showing total 19 results

Search Constraints

Start Over You searched for: Author "Gandomkar, Ziba" Remove constraint Author: "Gandomkar, Ziba" Topic breast neoplasms Remove constraint Topic: breast neoplasms
19 results on '"Gandomkar, Ziba"'

Search Results

1. Familiarity, confidence and preference of artificial intelligence feedback and prompts by Australian breast cancer screening readers.

2. AI for interpreting screening mammograms: implications for missed cancer in double reading practices and challenging-to-locate lesions.

3. Computer-extracted global radiomic features can predict the radiologists' first impression about the abnormality of a screening mammogram.

4. The use of radiomics in magnetic resonance imaging for the pre-treatment characterisation of breast cancers: A scoping review.

5. Incidence, mortality, survival, and disease burden of breast cancer in China compared to other developed countries.

6. Global Radiomic Features from Mammography for Predicting Difficult-To-Interpret Normal Cases.

7. Associations of Breast Arterial Calcifications with Cardiovascular Disease.

8. Do Reader Characteristics Affect Diagnostic Efficacy in Screening Mammography? A Systematic Review.

9. Understanding mammographic breast density profile in China: A Sino-Australian comparative study of breast density using real-world data from cancer screening programs.

10. Differences in lesion interpretation between radiologists in two countries: Lessons from a digital breast tomosynthesis training test set.

11. Mammography-based Radiomics in Breast Cancer: A Scoping Review of Current Knowledge and Future Needs.

12. A machine learning model based on readers' characteristics to predict their performances in reading screening mammograms.

13. Global processing provides malignancy evidence complementary to the information captured by humans or machines following detailed mammogram inspection.

14. Clinicopathologic breast cancer characteristics: predictions using global textural features of the ipsilateral breast mammogram.

15. Computer-Assisted Nuclear Atypia Scoring of Breast Cancer: a Preliminary Study.

16. Visual search in breast imaging.

17. Radiologists can detect the 'gist' of breast cancer before any overt signs of cancer appear.

18. MuDeRN: Multi-category classification of breast histopathological image using deep residual networks.

Catalog

Books, media, physical & digital resources