Topics included but not limited to:
● BIA uses the same guidelines as MICCAI'18 main conference submissions. Find them in MICCAI Author's Guide.
● Papers should be formatted in Lecture Notes in Computer Science style. Template can be found HERE. The file format for submissions is Adobe Portable Document Format (PDF). Other formats will not be accepted.
● The maximum number of pages is 8. Submissions exceeding this limit will be rejected without review.
● You should not modify any of the formatting commands in the style files. Any modifications found may result in automatic rejection.
● The review process is double blind. Submissions are to be fully anonymized.
● It is also possible to submit supplementary material with your submission (see section 5 of MICCAI Author's Guide for more information about the format). The deadline for submitting the supplementary material is the same as for the main paper.
9:30am - 9:45am
9:45am - 10:30am
Ultrasound: An age-old ingredient, for new recipes in medical imaging
10:30am - 11:00
Siamese Network for Dual-View Mammography
Mass Matching
Shaked Perek, Alon Hazan, Ella Barkan,
Ayelet Akselrod-Ballin
Large-scale mammography CAD with
Deformable Conv-Nets
Stephen Morrell, Zbigniew Wojna, Can Son Khoo, Sebastien Ourselin, Juan Eugenio Iglesias
Domain Adaptation for Deviating Acquisition Protocols in CNN-based Lesion Classification on
Diffusion-Weighted MR Images
Jennifer Kamphenkel, Paul F. Jager, Sebastian Bickelhaupt, Frederik Bernd Laun , Wolfgang Lederer, Heidi Daniel, Tristan Anselm Kuder, Stefan Delorme, Heinz-Peter Schlemmer, Franziska Konig,
Klaus H. Maier-Hein
Reproducible evaluation of registration algorithms for movement correction in dynamic contrast enhancing magnetic resonance imaging for
breast cancer diagnosis
I. A. Illan, J. Ramirez, J. M. Gorriz, K. Pinker, A. Meyer-Baese
Improved Breast Mass Segmentation in Mammograms with Conditional Residual U-net
Heyi Li, Dongdong Chen, William H. Nailon,
Mike E. Davies, David Laurenson
Improving Breast Cancer Detection using Symmetry Information with Deep Learning
Yeman Brhane Hagos, Albert Gubern Merida,
Jonas Teuwen
Conditional Infilling GANs for Data Augmentation in Mammogram Classification
Eric Wu, Kevin Wu, David Cox, William Lotter
A Unified Mammogram Analysis Method via Hybrid Deep Supervision
Rongzhao Zhang, Han Zhang, Albert C.S. Chung
Structure-aware Staging for Breast Cancer Metastases
Songtao Zhang, Li Sun, Ruiqiao Wang, Hongping Tang, Jin Zhang, Lin Luo
11:00 - 11:30
11:30 - 12:15
Computer-aided detection and diagnosis of breast cancer with MRI
12:15 - 13:00
Towards Clinically Viable AI for Screening Mammography
13:00 - 13:10
13:10 - 13:30
The University of Adelaide
Australia
The University of Adelaide
Australia
The University of Queensland
Autralia
Instituto Superior Tecnico
Portugal
The University of Queensland
Australia
Help Us to Promote BIA'18!