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Abdul qayyum

LearnAI

  •  United Kingdom
  •  Kings College London
  •  School of Biomedical and Imaging Sciences
Statistics
  • Member for 1 year, 11 months
  • 2 challenge submissions

Activity Overview

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Learn2Reg
Challenge Participant

Challenge on medical image registration addressing: learning from small datasets; estimating large deformations; dealing with multi-modal scans; and learning from noisy annotations

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Cross-Modality Domain Adaptation Image Segmentation - 2021
Challenge Participant

The CrossMoDA challenge 2021 introduces the first large and multi-class medical dataset for unsupervised cross-modality Domain Adaptation.

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FeTA - Fetal Tissue Annotation Challenge
Challenge Participant

Fetal Tissue Annotation Challenge

TDSC-ABUS2023 Logo
TDSC-ABUS2023
Challenge Participant

Tumor Detection, Segmentation and Classification Challenge on Automated 3D Breast Ultrasound

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INSTANCE2022
Challenge Participant

The 2022 Intracranial Hemorrhage Segmentation Challenge on Non-Contrast head CT (NCCT)

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SynthRAD2023
Challenge Participant

SynthRAD is the first challenge on automatic generation of synthetic computed tomography (sCT) for radiotherapy

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Cross-Modality Domain Adaptation: Segmentation & Classification
Challenge Participant

The CrossMoDA 2022 challenge is the second edition of the first large and multi-class medical dataset for unsupervised cross-modality Domain Adaptation.

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Multi-site, Multi-Domain Airway Tree Modeling (ATM’22)
Challenge Participant

Airway segmentation is a crucial step for the analysis of pulmonary diseases including asthma, bronchiectasis, and emphysema. The accurate segmentation based on X-Ray computed tomography (CT) enables the quantitative measurements of airway dimensions and wall thickness, which can reveal the abnormality of patients with chronic obstructive pulmonary disease (COPD). Besides, the extraction of patient-specific airway models from CT images is required for navigatiisted surgery.

PS-FH-AOP-2023 Logo
FH-PS-AOP challenge
Challenge Participant

Fetal Head and Pubic Symphysis Segmentation Challenge

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Ischemic Stroke Lesion Segmentation Challenge
Challenge Participant

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PAIP 2023: TC prediction in pancreatic and colon cancer
Challenge Participant

Tumor cellularity prediction in pancreatic cancer (supervised learning) and colon cancer (transfer learning)

HaN-Seg2023 Logo
The Head and Neck Organ-at-Risk CT & MR Segmentation Challenge
Challenge Participant

A semantic multimodal segmentation challenge comprising 30 organs at risk

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Robust Non-rigid Registration Challenge for Expansion Microscopy
Challenge Participant

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Xray Projectomic Reconstruction Extracting Segment with Skeleton
Challenge Participant

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autoPET-II
Challenge Participant

Automated Lesion Segmentation in PET/CT - Domain Generalization

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ToothFairy: Cone-Beam Computed Tomography Segmentation Challenge
Challenge Participant

This is the first edition of the ToothFairy challenge organized by the University of Modena and Reggio Emilia with the collaboration of Raudboud University. This challenge aims at pushing the development of deep learning frameworks to segment the Inferior Alveolar Canal (IAC) by incrementally extending the amount of publicly available 3D-annotated Cone Beam Computed Tomography (CBCT) scans. CBCT modality is becoming increasingly important for treatment planning and diagnosis in implant dentistry and maxillofacial surgery. The three-dimensional information acquired with CBCT can be crucial to plan a vast number of surgical interventions with the aim of preserving noble anatomical structures such as the Inferior Alveolar Canal (IAC), which contains the homonymous nerve (Inferior Alveolar Nerve, IAN). Deep learning models can support medical personnel in surgical planning procedures by providing a voxel-level segmentation of the IAN automatically extracted from CBCT scans.

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SPIDER
Challenge Participant

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LNQ2023
Challenge Participant

Accurate lymph node size estimation is critical for staging cancer patients, initial therapeutic management, and in longitudinal scans, assessing response to therapy. Current standard practice for quantifying lymph node size is based on a variety of criteria that use unidirectional or bidirectional measurements on just one or a few nodes, typically on just one axial slice. But humans have hundreds of lymph nodes, any number of which may be enlarged to various degrees due to disease or immune response. While a normal lymph node may be approximately 5mm in diameter, a diseased lymph node may be several cm in diameter. The mediastinum, the anatomical area between the lungs and around the heart, may contain ten or more lymph nodes, often with three or more enlarged greater than 1cm. Accurate segmentation in 3D would provide more information to evaluate lymph node disease.

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ARCADE-MICCAI2023
Challenge Participant

UltrasoundEnhance2023 Logo
Ultrasound Image Enhancement challenge 2023
Challenge Participant

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SEG.A. - Segmentation of the Aorta
Challenge Participant

Segmentation, modeling and visualization of the arterial tree are still a challenge in medical image analysis. The main track of this challenge deals with the fully automatic segmentation of the aortic vessel tree in computed tomography images. Optionally, teams can submit tailored solutions for meshing and visualization of the vessel tree.

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Surgical Planning in Pediatric Neuroblastoma
Challenge Participant

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SegRap 2023
Challenge Participant

A segmentation challenge with 200 patients (two modalities of CT images, 45 OARs and 2 GTVs).

LDCTIQAC2023 Logo
Low-dose Computed Tomography Perceptual Image Quality Assessment
Challenge Participant

CL-Detection2023 Logo
CL-Detection 2023
Challenge Participant

Cephalometric landmark detection in lateral x-ray images

BONBID-HIE2023 Logo
Hypoxic Ischemic Encephalopathy Lesion Segmentation Challenge
Challenge Participant