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Ming Feng

Andrew_tal

  •  China
  •  tongji university
  •  ceie
Statistics
  • Member for 5 years
  • 36 challenge submissions

Activity Overview

CAMELYON17 Logo
CAMELYON17
Challenge Participant

Automated detection and classification of breast cancer metastases in whole-slide images of histological lymph node sections. This task has high clinical relevance and would normally require extensive microscopic assessment by pathologists.

ICIAR2018-Challenge Logo
ICIAR 2018
Challenge Participant

Can you develop a method for automatic detection of cancerous regions in breast cancer histology images?

KiTS19 Logo
KiTS19
Challenge Participant

2019 Kidney and Kidney Tumor Segmentation Challenge

patchcamelyon Logo
PatchCamelyon
Challenge Participant

PatchCamelyon is a new and challenging image classification dataset of 327.680 color images (96 x 96px) extracted from histopathology images of the CAMELYON16 challenge. The goal is to detect breast cancer metastasis in lymph nodes.

VerSe2019 Logo
VerSe`19
Challenge Participant

Vertebrae labelling and segmentation on a spine dataset on an unprecedented 150 CT scans with voxel-level vertebral annotations.

ECDP2020 Logo
HEROHE
Challenge Participant

Unlike previous challenges, this proposes to find an image analysis algorithm to identify HER2-positive from HER2-negative breast cancer specimens evaluating only the morphological features present on the HE slide, without the staining patterns of IHC.

TN-SCUI2020 Logo
Thyroid Nodule Segmentation and Classification
Challenge Participant

The main topic of this TN-SCUI2020 challenge is finding automatic algorithms to accurately classify the thyroid nodules in ultrasound images. It will provide the biggest public dataset of thyroid nodule with over 4500 patient cases from different ages, genders, and were collected using different ultrasound machines. Each ultrasound image is provided with its ground truth class (benign or maglinant) and a detailed delineation of the nodule. This challenge will provide a unique opportunity for participants from different backgrounds (e.g. academia, industry, and government, etc.) to compare their algorithms in an impartial way.

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QUBIQ
Challenge Participant

Quantification of Uncertainties in Biomedical Image Segmentation Challenge

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RIADD (ISBI-2021)
Challenge Participant

Retinal Image Analysis for multi-Disease Detection

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A-AFMA
Challenge Participant

Prenatal ultrasound (US) measurement of amniotic fluid is an important part of fetal surveillance as it provides a non-invasive way of assessing whether there is oligohydramnios (insufficient amniotic fluid) and polyhydramnios (excess amniotic fluid), which are associated with numerous problems both during pregnancy and after birth. In this Image Analysis Challenge, we aim to attract attention from the image analysis community to work on the problem of automated measurement of the MVP using the predefined ultrasound video clip based on a linear-sweep protocol [1]. We define two tasks. The first task is to automatically detect amniotic fluid and the maternal bladder. The second task is to identify the appropriate points for MVP measurement given the selected frame of the video clip, and calculate the length of the connected line between these points. The data was collected from women in the second trimester of pregnancy, as part of the PURE study at the John Radcliffe Hospital in Oxford, UK.

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PAIP2021
Challenge Participant

PAIP 2021 Challenge; Perineural invasion in multiple organ cancer (colon, prostate and pancreatobiliary tract)

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FeTA - Fetal Tissue Annotation Challenge
Challenge Participant

Fetal Tissue Annotation Challenge

MIDOG2021 Logo
MIDOG Challenge 2021
Challenge Participant

Mitosis Domain Generalization Challenge 2021 (part of MICCAI 2021)