DFUC2020: Analysis Towards Diabetic Foot Ulcer Detection
- URL: http://arxiv.org/abs/2004.11853v3
- Date: Mon, 24 May 2021 12:20:32 GMT
- Title: DFUC2020: Analysis Towards Diabetic Foot Ulcer Detection
- Authors: Bill Cassidy and Neil D. Reeves and Pappachan Joseph and David
Gillespie and Claire O'Shea and Satyan Rajbhandari and Arun G. Maiya and Eibe
Frank and Andrew Boulton and David Armstrong and Bijan Najafi and Justina Wu
and Moi Hoon Yap
- Abstract summary: Every 20 seconds, a limb is amputated somewhere in the world due to diabetes.
Recent research has focused on the creation of cloud-based detection algorithms.
Patients (or a carer, partner or family member) could use themselves at home to monitor their condition and to detect the appearance of a diabetic foot ulcer (DFU)
- Score: 4.280110205022879
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Every 20 seconds, a limb is amputated somewhere in the world due to diabetes.
This is a global health problem that requires a global solution. The MICCAI
challenge discussed in this paper, which concerns the automated detection of
diabetic foot ulcers using machine learning techniques, will accelerate the
development of innovative healthcare technology to address this unmet medical
need. In an effort to improve patient care and reduce the strain on healthcare
systems, recent research has focused on the creation of cloud-based detection
algorithms. These can be consumed as a service by a mobile app that patients
(or a carer, partner or family member) could use themselves at home to monitor
their condition and to detect the appearance of a diabetic foot ulcer (DFU).
Collaborative work between Manchester Metropolitan University, Lancashire
Teaching Hospital and the Manchester University NHS Foundation Trust has
created a repository of 4,000 DFU images for the purpose of supporting research
toward more advanced methods of DFU detection. Based on a joint effort
involving the lead scientists of the UK, US, India and New Zealand, this
challenge will solicit original work, and promote interactions between
researchers and interdisciplinary collaborations. This paper presents a dataset
description and analysis, assessment methods, benchmark algorithms and initial
evaluation results. It facilitates the challenge by providing useful insights
into state-of-the-art and ongoing research. This grand challenge takes on even
greater urgency in a peri and post-pandemic period, where stresses on resource
utilization will increase the need for technology that allows people to remain
active, healthy and intact in their home.
Related papers
- A Survey of Artificial Intelligence in Gait-Based Neurodegenerative Disease Diagnosis [51.07114445705692]
neurodegenerative diseases (NDs) traditionally require extensive healthcare resources and human effort for medical diagnosis and monitoring.
As a crucial disease-related motor symptom, human gait can be exploited to characterize different NDs.
The current advances in artificial intelligence (AI) models enable automatic gait analysis for NDs identification and classification.
arXiv Detail & Related papers (2024-05-21T06:44:40Z) - DRAC: Diabetic Retinopathy Analysis Challenge with Ultra-Wide Optical
Coherence Tomography Angiography Images [51.27125547308154]
We organized a challenge named "DRAC - Diabetic Retinopathy Analysis Challenge" in conjunction with the 25th International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI 2022)
The challenge consists of three tasks: segmentation of DR lesions, image quality assessment and DR grading.
This paper presents a summary and analysis of the top-performing solutions and results for each task of the challenge.
arXiv Detail & Related papers (2023-04-05T12:04:55Z) - When Accuracy Meets Privacy: Two-Stage Federated Transfer Learning
Framework in Classification of Medical Images on Limited Data: A COVID-19
Case Study [77.34726150561087]
COVID-19 pandemic has spread rapidly and caused a shortage of global medical resources.
CNN has been widely utilized and verified in analyzing medical images.
arXiv Detail & Related papers (2022-03-24T02:09:41Z) - The Prominence of Artificial Intelligence in COVID-19 [0.5437050212139087]
In December 2019, a novel virus called COVID-19 had caused an enormous number of causalities to date.
This survey paper explores the methodologies proposed that can aid doctors and researchers in early and inexpensive methods of diagnosis of the disease.
Most developing countries have difficulties carrying out tests using the conventional manner, but a significant way can be adopted with Machine and Deep Learning.
arXiv Detail & Related papers (2021-11-18T06:11:45Z) - Hybrid stacked ensemble combined with genetic algorithms for Prediction
of Diabetes [0.0]
Diabetes is one of the most common, dangerous, and costly diseases in the world.
In this study, we use the experimental data, real data on Indian diabetics on the University of California website.
Results show the high performance of the proposed method in diagnosing the disease, which has reached 98.8%, and 99% accuracy in this study.
arXiv Detail & Related papers (2021-03-15T07:47:23Z) - FLOP: Federated Learning on Medical Datasets using Partial Networks [84.54663831520853]
COVID-19 Disease due to the novel coronavirus has caused a shortage of medical resources.
Different data-driven deep learning models have been developed to mitigate the diagnosis of COVID-19.
The data itself is still scarce due to patient privacy concerns.
We propose a simple yet effective algorithm, named textbfFederated textbfL textbfon Medical datasets using textbfPartial Networks (FLOP)
arXiv Detail & Related papers (2021-02-10T01:56:58Z) - Assessing Automated Machine Learning service to detect COVID-19 from
X-Ray and CT images: A Real-time Smartphone Application case study [0.0]
The recent outbreak of SARS COV-2 gave us a unique opportunity to study for a non interventional and sustainable AI solution.
This study will better equip us to respond with an ML-based diagnostic Decision Support System for a Pandemic situation like COVID19.
One of the main goal of this study was to develop and evaluate the performance of AI-powered Smartphone-based Real-time Application.
arXiv Detail & Related papers (2020-10-03T23:18:05Z) - CPAS: the UK's National Machine Learning-based Hospital Capacity
Planning System for COVID-19 [111.69190108272133]
The coronavirus disease 2019 poses the threat of overwhelming healthcare systems with unprecedented demands for intensive care resources.
We developed the COVID-19 Capacity Planning and Analysis System (CPAS) - a machine learning-based system for hospital resource planning.
CPAS is one of the first machine learning-based systems to be deployed in hospitals on a national scale to address the COVID-19 pandemic.
arXiv Detail & Related papers (2020-07-27T19:39:13Z) - Visualising COVID-19 Research [4.664989082015335]
We develop a novel automated theme-based visualisation method.
It combines advanced data modelling of large corpora, information mapping and trend analysis.
It provides a top-down and bottom-up browsing and search interface for quick discovery of topics and research resources.
arXiv Detail & Related papers (2020-05-13T15:45:14Z) - Mapping the Landscape of Artificial Intelligence Applications against
COVID-19 [59.30734371401316]
COVID-19, the disease caused by the SARS-CoV-2 virus, has been declared a pandemic by the World Health Organization.
We present an overview of recent studies using Machine Learning and, more broadly, Artificial Intelligence to tackle many aspects of the COVID-19 crisis.
arXiv Detail & Related papers (2020-03-25T12:30:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.