Peering Into the Black Box of Artificial Intelligence: Evaluation Metrics of Machine Learning Methods (original) (raw)
Assessing Radiology Research on Artificial Intelligence: A Brief Guide for Authors, Reviewers, and Readers—From the Radiology Editorial Board
Mark Schiebler
Radiology, 2019
View PDFchevron_right
Engineering and clinical use of artificial intelligence (AI) with machine learning and data science advancements: radiology leading the way for future
Piotr Chlosta
Therapeutic Advances in Urology, 2021
View PDFchevron_right
The Need for a Machine Learning Curriculum for Radiologists
Katherine Andriole
Journal of the American College of Radiology, 2018
View PDFchevron_right
Integrating artificial intelligence into the clinical practice of radiology: challenges and recommendations
Barbara Prainsack
European Radiology, 2020
View PDFchevron_right
To buy or not to buy—evaluating commercial AI solutions in radiology (the ECLAIR guidelines)
Antoine Tournier
European Radiology, 2021
View PDFchevron_right
Machine learning in cardiovascular radiology: ESCR position statement on design requirements, quality assessment, current applications, opportunities, and challenges
Birgitta Velthuis
European Radiology
View PDFchevron_right
Canadian Association of Radiologists White Paper on Artificial Intelligence in Radiology
Paul Babyn
Canadian Association of Radiologists journal = Journal l'Association canadienne des radiologistes, 2018
View PDFchevron_right
Effectiveness of machine learning and artificial intelligence in formulating radiological reports for faster and more reliable diagnostics
Arnabjyoti De
World Journal of Biology Pharmacy and Health Sciences, 2024
View PDFchevron_right
Machine learning in radiology current perspective
Mayur Pankhania
View PDFchevron_right
A giant with feet of clay: on the validity of the data that feed machine learning in medicine
federico antonio niccolo amedeo cabitza
arXiv (Cornell University), 2017
View PDFchevron_right
Artificial Intelligence and Radiology: Collaboration Is Key
Ferdinand Hui
Journal of the American College of Radiology, 2018
View PDFchevron_right
Machine Learning in Clinical, Academic, and Surgical Medicine
Catherine Mardon, Peter A Johnson
Academia Letters, 2021
View PDFchevron_right
The AI Applications in Radiology: Regulation, Evaluation, and Usage
Olga Scrivner, Jacob Olinger
Proceedings of the Midwest Instruction and Computing Symposium 2024, 2024
View PDFchevron_right
How Accurate Do You Want It? Defining Minimum Required Accuracy for Medical Artificial Intelligence
alice ravizza
2020
View PDFchevron_right
What the radiologist should know about artificial intelligence – an ESR white paper
Prof. Emanuele Neri
2019
View PDFchevron_right
Applications and challenges of artificial intelligence in diagnostic and interventional radiology
Ahmad Amireh
Polish Journal of Radiology, 2022
View PDFchevron_right
A Pathologist-Annotated Dataset for Validating Artificial Intelligence: A Project Description and Pilot Study
Bruce Werness
arXiv: Quantitative Methods, 2020
View PDFchevron_right
Detecting Spurious Correlations With Sanity Tests for Artificial Intelligence Guided Radiology Systems
Lorenzo Mannelli
Frontiers in Digital Health
View PDFchevron_right
Artificial intelligence performance in detecting tumor metastasis from medical radiology imaging: A systematic review and meta-analysis
Johannes Meller
EClinicalMedicine
View PDFchevron_right
Artificial intelligence and neural networks in radiology – Basics that all radiology residents should know
Viktor Berczi
Imaging, 2022
View PDFchevron_right
eDoctor: machine learning and the future of medicine
Amir Hossein Razavi
Journal of Internal Medicine, 2018
View PDFchevron_right
minoHealth.ai: A Clinical Evaluation Of Deep Learning Systems For the Diagnosis of Pleural Effusion and Cardiomegaly In Ghana, Vietnam and the United States of America
Bashiru Babatunde Jimah
Cornell University - arXiv, 2022
View PDFchevron_right
Machine learning: from radiomics to discovery and routine
Jeng-shyang Pan
Der Radiologe, 2018
View PDFchevron_right
Turing Test Inspired Method for Analysis of Biases Prevalent in Artificial Intelligence-Based Medical Imaging
satvik Tripathi
View PDFchevron_right
Artificial intelligence & deep learning for the radiologist: a simple updated guide without the maths
Som Biswas
Springer, 2022
View PDFchevron_right
On the Interpretability of Artificial Intelligence in Radiology: Challenges and Opportunities
Michael Dahlweid
Radiology: Artificial Intelligence, 2020
View PDFchevron_right
Evaluation of Combined Artificial Intelligence and Radiologist Assessment to Interpret Screening Mammograms
Pavitra Krishnaswamy
JAMA Network Open
View PDFchevron_right
Sample-Size Determination Methodologies for Machine Learning in Medical Imaging Research: A Systematic Review
Afsaneh Amirabadi
Canadian Association of Radiologists journal, 2019
View PDFchevron_right
Value assessment of artificial intelligence in medical imaging: a scoping review
KRISTIAN KIDHOLM
BMC Medical Imaging, 2022
View PDFchevron_right
Artificial Intelligence in Radiology: Current Technology and Future Directions
Ali Syed
Seminars in Musculoskeletal Radiology, 2018
View PDFchevron_right
Editorial: Machine Learning in Clinical Decision-Making
Amanda Filiberto
Frontiers in Digital Health, 2021
View PDFchevron_right
Successful creation of clinical AI without data scientists or software developers: radiologist-trained AI model for identifying suboptimal chest-radiographs
Reya Gupta
View PDFchevron_right
Artificial Intelligence in medical imaging practice: looking to the future
WILLIAM ANTWI
Journal of Medical Radiation Sciences, 2019
View PDFchevron_right
Machine Learning in Nuclear Medicine: Part 2—Neural Networks and Clinical Aspects
Katherine Zukotynski
Journal of Nuclear Medicine, 2020
View PDFchevron_right
Artificial Intelligence: Guidance for clinical imaging and therapeutic radiography professionals, a summary by the Society of Radiographers AI working group
Noorayen alware
Radiography, 2021
View PDFchevron_right