Everything is Varied: The Surprising Impact of Individual Variation on ML Robustness in Medicine (original) (raw)

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

Machine learning in clinical and epidemiological research: isn't it time for biostatisticians to work on it?

Andrea Bucci

Epidemiology, biostatistics, and public health, 2019

View PDFchevron_right

eDoctor: machine learning and the future of medicine

Amir Hossein Razavi

Journal of Internal Medicine, 2018

View PDFchevron_right

Potential Biases in Machine Learning Algorithms Using Electronic Health Record Data

Milena Gianfrancesco

JAMA Internal Medicine, 2018

View PDFchevron_right

Steps to avoid overuse and misuse of machine learning in clinical research

Ari Ercole

Nature Medicine, 2022

View PDFchevron_right

Machine Learning to Evaluate the Quality of Patient Reported Epidemiological Data

Toshi Yumoto, Rochelle E Tractenberg

View PDFchevron_right

Learning Disease vs Participant Signatures: a permutation test approach to detect identity confounding in machine learning diagnostic applications

Abhishek Pratap

arXiv: Applications, 2017

View PDFchevron_right

Synthetic data in machine learning for medicine and healthcare

Faisal Mahmood

Nature Biomedical Engineering, 2021

View PDFchevron_right

""Unleashing the Potential of Supervised Learning: Exploring Data Variations to Shape ML Techniques"

vidyasagar vuna

Technische Sichercheit, 2024

View PDFchevron_right

When will the mist clear? On the Interpretability of Machine Learning for Medical Applications: a survey

Adrian Iftene

2020

View PDFchevron_right

Machine learning landscapes and predictions for patient outcomes

Ritankar Das

Royal Society Open Science, 2017

View PDFchevron_right

Navigating the Intersection of Machine Learning and Healthcare: A Review of Current Applications

Herat Joshi

International Journal of Advanced Research in Computer and Communication Engineering, 2022

View PDFchevron_right

Erroneous data: The Achilles' heel of AI and personalized medicine

Jakob Uffelmann

Frontiers in Digital Health

View PDFchevron_right

Comparison of Conventional Statistical Methods with Machine Learning in Medicine: Diagnosis, Drug Development, and Treatment

Nadia Antonucci

Medicina, 2020

View PDFchevron_right

How machine learning could be used in clinical practice during an epidemic

GĂ©rard Dreyfus

Critical Care, 2020

View PDFchevron_right

Clinical applications of machine learning algorithms: beyond the black box

Jenny Krutzinna, Michael Barnes, Luciano Floridi, David Watson

BMJ, 2019

View PDFchevron_right

AI-DRIVEN SOLUTIONS FOR HEALTHCARE: IMPROVING DIAGNOSTICS AND TREATMENT THROUGH MACHINE LEARNING

IAEME Publication

IAEME PUBLICATION, 2021

View PDFchevron_right

Increasing the Density of Laboratory Measures for Machine Learning Applications

Yanfei ZHANG

Journal of Clinical Medicine, 2020

View PDFchevron_right

Machine Learning in Clinical, Academic, and Surgical Medicine

Catherine Mardon, Peter A Johnson

Academia Letters, 2021

View PDFchevron_right

Quantifying machine learning-induced overdiagnosis in sepsis

Anna Fedyukova

ArXiv, 2021

View PDFchevron_right

Bridging the implementation gap of machine learning in healthcare

Larry Chu

BMJ Innovations, 2019

View PDFchevron_right

Generating high-fidelity synthetic patient data for assessing machine learning healthcare software

Zhenchen Wang

npj Digital Medicine

View PDFchevron_right

The importance of being external. methodological insights for the external validation of machine learning models in medicine

federico antonio niccolo amedeo cabitza

Computer Methods and Programs in Biomedicine, 2021

View PDFchevron_right

The Silent Problem - Machine Learning Model Failure - How to Diagnose and Fix Ailing Machine Learning Models

Jaya Balusu

ArXiv, 2022

View PDFchevron_right

Machine Learning in Health Care: A Critical Appraisal of Challenges and Opportunities

anthony lin

eGEMs (Generating Evidence & Methods to improve patient outcomes), 2019

View PDFchevron_right

Maintaining proper health records improves machine learning predictions for novel 2019-nCoV

Emilie Ann Ramsahai

Research Square (Research Square), 2020

View PDFchevron_right

Descriptive Analysis of Machine Learning and Its Application in Healthcare

Venkata Dinesh Reddy Kalli, sai sruthi gadde

International Journal of Computer Science Trends and Technology, 2020

View PDFchevron_right

Automated clinical computational biology: an interpretable machine learning framework to predict disease severity and stratify patients from clinical data

Soumya Banerjee

2018

View PDFchevron_right

Handling of uncertainty in medical data using machine learning and probability theory techniques: A review of 30 years (1991-2020)

Amir Atiya

arXiv (Cornell University), 2020

View PDFchevron_right

Designing Data-Driven Learning Algorithms: A Necessity to Ensure Effective Post-Genomic Medicine and Biomedical Research

Bubacarr Bah

Artificial Intelligence - Applications in Medicine and Biology [Working Title]

View PDFchevron_right

Using permutations to assess confounding in machine learning applications for digital health

Abhishek Pratap

arXiv (Cornell University), 2018

View PDFchevron_right

Machine Learning based COVID-19 Diagnosis from Blood Tests with Robustness to Domain Shifts

Jens Meier

2021

View PDFchevron_right

Machine Learning Applied to Clinical Laboratory Data in Spain for COVID-19 Outcome Prediction: Model Development and Validation (Preprint)

Jacinto Mata

2020

View PDFchevron_right