i3S Annotated Datasets on Digital Pathology WELCOME In an effort to contribute and push forward the field of Digital Pathology, Ipatimup and INEB, two major research institutions in Portugal, have joined forces in the construction of histology datasets to support grand Challenges on automatic classification of tissue malignancy. The researchers/pathologists responsible for the datasets are: António Polónia (MD), Ipatimup/i3S Catarina Eloy (MD, PhD), Ipatimup/i3S Paulo Aguiar (PhD), INEB/i3S This specific page refers to the Grand Challenge on Breast Cancer Histology images, or BACH Challenge THE BACH CHALLENGE DATASET ICIAR 2018 - Grand Challenge on Breast Cancer Histology images [Challenge organized by Teresa Araújo, Guilhe...
Deep Learning (DL) algorithms are a set of techniques that exploit large and/or complex real-world d...
Breast cancer is the second most deadly disease worldwide. This severe condition led to 627,000 peop...
Abstract: In recent years researchers are intensely using machine learning and employing AI techniqu...
Breast cancer is the most common invasive cancer in women, affecting more than 10% of women worldwid...
Orientador: Prof. Dr. Luiz Eduardo Soares de OliveiraTese (doutorado) - Universidade Federal do Para...
Pathologic assessment of tissue sections is an important part of breast cancer diagnosis, with early...
Breast cancer is associated with the highest morbidity rates for cancer diagnoses in the world and h...
<p>This dataset contains cases of breast carcinoma histological specimens received at the Department...
Breast cancer is the most common malignant disease in women worldwide. In recent decades, earlier di...
Breast cancer is a major public health issue that may be remedied with early identification and effi...
Contains fulltext : 178907.pdf (publisher's version ) (Open Access)Promotor : Kars...
Medical imaging is gaining significant attention in healthcare, including breast cancer. Breast canc...
This brief presentation provides an outline of and next steps for the project, which aims to develop...
Cancer is the second deadliest disease in the US. Each year, breast cancer alone causes the deaths o...
Orientador: Lucas Ferrari de OliveiraCoorientador: Sergio Ossamu IoshiiDissertação (mestrado) - Univ...
Deep Learning (DL) algorithms are a set of techniques that exploit large and/or complex real-world d...
Breast cancer is the second most deadly disease worldwide. This severe condition led to 627,000 peop...
Abstract: In recent years researchers are intensely using machine learning and employing AI techniqu...
Breast cancer is the most common invasive cancer in women, affecting more than 10% of women worldwid...
Orientador: Prof. Dr. Luiz Eduardo Soares de OliveiraTese (doutorado) - Universidade Federal do Para...
Pathologic assessment of tissue sections is an important part of breast cancer diagnosis, with early...
Breast cancer is associated with the highest morbidity rates for cancer diagnoses in the world and h...
<p>This dataset contains cases of breast carcinoma histological specimens received at the Department...
Breast cancer is the most common malignant disease in women worldwide. In recent decades, earlier di...
Breast cancer is a major public health issue that may be remedied with early identification and effi...
Contains fulltext : 178907.pdf (publisher's version ) (Open Access)Promotor : Kars...
Medical imaging is gaining significant attention in healthcare, including breast cancer. Breast canc...
This brief presentation provides an outline of and next steps for the project, which aims to develop...
Cancer is the second deadliest disease in the US. Each year, breast cancer alone causes the deaths o...
Orientador: Lucas Ferrari de OliveiraCoorientador: Sergio Ossamu IoshiiDissertação (mestrado) - Univ...
Deep Learning (DL) algorithms are a set of techniques that exploit large and/or complex real-world d...
Breast cancer is the second most deadly disease worldwide. This severe condition led to 627,000 peop...
Abstract: In recent years researchers are intensely using machine learning and employing AI techniqu...