Secure and robust machine learning for healthcare: A survey

A Qayyum, J Qadir, M Bilal… - IEEE Reviews in …, 2020 - ieeexplore.ieee.org
Recent years have witnessed widespread adoption of machine learning (ML)/deep learning
(DL) techniques due to their superior performance for a variety of healthcare applications …

Machine learning in mental health: A systematic review of the HCI literature to support the development of effective and implementable ML systems

A Thieme, D Belgrave, G Doherty - ACM Transactions on Computer …, 2020 - dl.acm.org
High prevalence of mental illness and the need for effective mental health care, combined
with recent advances in AI, has led to an increase in explorations of how the field of machine …

What clinicians want: contextualizing explainable machine learning for clinical end use

S Tonekaboni, S Joshi… - Machine learning …, 2019 - proceedings.mlr.press
Translating machine learning (ML) models effectively to clinical practice requires
establishing clinicians' trust. Explainability, or the ability of an ML model to justify its …

[HTML][HTML] Explainable, trustworthy, and ethical machine learning for healthcare: A survey

K Rasheed, A Qayyum, M Ghaly, A Al-Fuqaha… - Computers in Biology …, 2022 - Elsevier
With the advent of machine learning (ML) and deep learning (DL) empowered applications
for critical applications like healthcare, the questions about liability, trust, and interpretability …

Machine learning for predicting epileptic seizures using EEG signals: A review

K Rasheed, A Qayyum, J Qadir… - IEEE reviews in …, 2020 - ieeexplore.ieee.org
With the advancement in artificial intelligence (AI) and machine learning (ML) techniques,
researchers are striving towards employing these techniques for advancing clinical practice …

Mimic-extract: A data extraction, preprocessing, and representation pipeline for mimic-iii

S Wang, MBA McDermott, G Chauhan… - Proceedings of the …, 2020 - dl.acm.org
Machine learning for healthcare researchers face challenges to progress and reproducibility
due to a lack of standardized processing frameworks for public datasets. We present MIMIC …

Predictive analytics in health care: how can we know it works?

B Van Calster, L Wynants, D Timmerman… - Journal of the …, 2019 - academic.oup.com
There is increasing awareness that the methodology and findings of research should be
transparent. This includes studies using artificial intelligence to develop predictive …

Medical imaging using machine learning and deep learning algorithms: a review

J Latif, C Xiao, A Imran, S Tu - 2019 2nd International …, 2019 - ieeexplore.ieee.org
Machine and deep learning algorithms are rapidly growing in dynamic research of medical
imaging. Currently, substantial efforts are developed for the enrichment of medical imaging …

Feature robustness in non-stationary health records: caveats to deployable model performance in common clinical machine learning tasks

B Nestor, MBA McDermott, W Boag… - Machine Learning …, 2019 - proceedings.mlr.press
When training clinical prediction models from electronic health records (EHRs), a key
concern should be a model's ability to sustain performance over time when deployed, even …

Developing measures of cognitive impairment in the real world from consumer-grade multimodal sensor streams

R Chen, F Jankovic, N Marinsek, L Foschini… - Proceedings of the 25th …, 2019 - dl.acm.org
The ubiquity and remarkable technological progress of wearable consumer devices and
mobile-computing platforms (smart phone, smart watch, tablet), along with the multitude of …