Medical deep learning-A systematic meta-review.

Jan Egger, Christina Gsaxner, Antonio Pepe, Kelsey L Pomykala, Frederic Jonske, Manuel Kurz, Jianning Li, Jens Kleesiek
Author Information
  1. Jan Egger: Institute of Computer Graphics and Vision, Faculty of Computer Science and Biomedical Engineering, Graz University of Technology, Inffeldgasse 16, 8010 Graz, Styria, Austria; Department of Oral &Maxillofacial Surgery, Medical University of Graz, Auenbruggerplatz 5/1, 8036 Graz, Styria, Austria; Computer Algorithms for Medicine Laboratory, Graz, Styria, Austria; Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, 45131 Essen, Germany; Cancer Research Center Cologne Essen (CCCE), University Medicine Essen, Hufelandstraße 55, 45147 Essen, Germany. Electronic address: egger@tugraz.at.
  2. Christina Gsaxner: Institute of Computer Graphics and Vision, Faculty of Computer Science and Biomedical Engineering, Graz University of Technology, Inffeldgasse 16, 8010 Graz, Styria, Austria; Department of Oral &Maxillofacial Surgery, Medical University of Graz, Auenbruggerplatz 5/1, 8036 Graz, Styria, Austria; Computer Algorithms for Medicine Laboratory, Graz, Styria, Austria.
  3. Antonio Pepe: Institute of Computer Graphics and Vision, Faculty of Computer Science and Biomedical Engineering, Graz University of Technology, Inffeldgasse 16, 8010 Graz, Styria, Austria; Computer Algorithms for Medicine Laboratory, Graz, Styria, Austria.
  4. Kelsey L Pomykala: Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, 45131 Essen, Germany.
  5. Frederic Jonske: Computer Algorithms for Medicine Laboratory, Graz, Styria, Austria; Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, 45131 Essen, Germany.
  6. Manuel Kurz: Institute of Computer Graphics and Vision, Faculty of Computer Science and Biomedical Engineering, Graz University of Technology, Inffeldgasse 16, 8010 Graz, Styria, Austria; Computer Algorithms for Medicine Laboratory, Graz, Styria, Austria.
  7. Jianning Li: Institute of Computer Graphics and Vision, Faculty of Computer Science and Biomedical Engineering, Graz University of Technology, Inffeldgasse 16, 8010 Graz, Styria, Austria; Computer Algorithms for Medicine Laboratory, Graz, Styria, Austria; Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, 45131 Essen, Germany.
  8. Jens Kleesiek: Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, 45131 Essen, Germany; Cancer Research Center Cologne Essen (CCCE), University Medicine Essen, Hufelandstraße 55, 45147 Essen, Germany; German Cancer Consortium (DKTK), Partner Site Essen, Hufelandstraße 55, 45147 Essen, Germany.

Abstract

Deep learning has remarkably impacted several different scientific disciplines over the last few years. For example, in image processing and analysis, deep learning algorithms were able to outperform other cutting-edge methods. Additionally, deep learning has delivered state-of-the-art results in tasks like autonomous driving, outclassing previous attempts. There are even instances where deep learning outperformed humans, for example with object recognition and gaming. Deep learning 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 the recent growth in the deep learning field has resulted in a large increase in research efforts. In Q2/2020, the search engine PubMed returned already over 11,000 results for the search term 'deep learning', and around 90% of these publications are from the last three years. However, even though PubMed represents the largest search engine in the medical field, it does not cover all medical-related publications. Hence, a complete overview of the field of 'medical deep learning' is almost impossible to obtain and acquiring a full overview of medical sub-fields is becoming increasingly more difficult. Nevertheless, several review and survey articles about medical deep learning have been published within the last few years. They focus, in general, on specific medical scenarios, like the analysis of medical images containing specific pathologies. With these surveys as a foundation, the aim of this article is to provide the first high-level, systematic meta-review of medical deep learning surveys.

Keywords

Grants

  1. KLI 678/Austrian Science Fund FWF

MeSH Term

Algorithms
Deep Learning
Humans
Image Processing, Computer-Assisted

Word Cloud

Created with Highcharts 10.0.0learningdeepmedicalanalysisdataMedicalDeeplastyearsimageprocessinglikefieldsearchPubMedseveralexampleresultsevenalsolargepatientPatientcollectedenginelearning'publicationsoverviewspecificsurveyssystematicmeta-reviewnetworksremarkablyimpacteddifferentscientificdisciplinesalgorithmsableoutperformcutting-edgemethodsAdditionallydeliveredstate-of-the-arttasksautonomousdrivingoutclassingpreviousattemptsinstancesoutperformedhumansobjectrecognitiongamingshowingvastpotentialdomaincollectionquantitiesrecordstrendtowardspersonalizedtreatmentsgreatneedautomatedreliablehealthinformationclinicalcentershospitalsprivatepracticesmobilehealthcareappsonlinewebsitesabundancerecentgrowthresultedincreaseresearcheffortsQ2/2020returnedalready11000term'deeparound90%threeHoweverthoughrepresentslargestcovermedical-relatedHencecomplete'medicalalmostimpossibleobtainacquiringfullsub-fieldsbecomingincreasinglydifficultNeverthelessreviewsurveyarticlespublishedwithinfocusgeneralscenariosimagescontainingpathologiesfoundationaimarticleprovidefirsthigh-levellearning-AArtificialneuralDataDetectionGenerativeadversarialImageMachineimagingMeta-reviewMeta-surveyPathologyRegistrationReviewSegmentationSurveySystematic

Similar Articles

Cited By