Medical Deep Learning -- A systematic Meta-Review
Jan Egger, Christina Gsaxner, Antonio Pepe, Kelsey L. Pomykala,, Frederic Jonske, Manuel Kurz, Jianning Li, Jens Kleesiek

TL;DR
This paper provides a comprehensive high-level meta-review of existing surveys on deep learning applications in medicine, highlighting the field's growth, challenges, and research trends across various medical sub-domains.
Contribution
It is the first systematic meta-review synthesizing and analyzing existing survey articles on medical deep learning to offer an overarching perspective.
Findings
Medical DL research has rapidly increased in recent years.
Most studies focus on medical image analysis and diagnostics.
The field faces challenges like data privacy and model interpretability.
Abstract
Deep learning (DL) has remarkably impacted several different scientific disciplines over the last few years. E.g., in image processing and analysis, DL algorithms were able to outperform other cutting-edge methods. Additionally, DL has delivered state-of-the-art results in tasks like autonomous driving, outclassing previous attempts. There are even instances where DL outperformed humans, for example with object recognition and gaming. DL is also showing vast potential in the medical domain. With the collection of large quantities of patient records and data, and a trend towards personalized treatments, there is a great need for automated and reliable processing and analysis of health information. Patient data is not only collected in clinical centers, like hospitals and private practices, but also by mobile healthcare apps or online websites. The abundance of collected patient data and…
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