Human selection bias drives the linear nature of the more ground truth effect in explainable deep learning optical coherence tomography image segmentation

Author:

Maloca Peter M.123ORCID,Pfau Maximilian124ORCID,Janeschitz‐Kriegl Lucas12,Reich Michael5,Goerdt Lukas4,Holz Frank G.4,Müller Philipp L.346,Valmaggia Philippe123,Fasler Katrin7,Keane Pearse A.3,Zarranz‐Ventura Javier8ORCID,Zweifel Sandrine7,Wiesendanger Jonas9,Kaiser Pascal9ORCID,Enz Tim J.2ORCID,Rothenbuehler Simon P.2,Hasler Pascal W.2,Juedes Marlene10,Freichel Christian10,Egan Catherine3,Tufail Adnan3,Scholl Hendrik P. N.12,Denk Nora1210

Affiliation:

1. Institute of Molecular and Clinical Ophthalmology Basel (IOB) Basel Switzerland

2. Department of Ophthalmology University Hospital Basel Basel Switzerland

3. Moorfields Eye Hospital NHS Foundation Trust London UK

4. Department of Ophthalmology University of Bonn Bonn Germany

5. Eye Center, Medical Center–University of Freiburg, Faculty of Medicine University of Freiburg Freiburg Germany

6. Makula Center Suedblick Eye Centers Augsburg Germany

7. Department of Ophthalmology, University Hospital Zurich University of Zurich Zurich Switzerland

8. Hospital Clínic of Barcelona University of Barcelona Barcelona Spain

9. Supercomputing Systems Zurich Switzerland

10. Pharma Research and Early Development (pRED) Pharmaceutical Sciences (PS), Roche, Innovation Center Basel Basel Switzerland

Abstract

AbstractSupervised deep learning (DL) algorithms are highly dependent on training data for which human graders are assigned, for example, for optical coherence tomography (OCT) image annotation. Despite the tremendous success of DL, due to human judgment, these ground truth labels can be inaccurate and/or ambiguous and cause a human selection bias. We therefore investigated the impact of the size of the ground truth and variable numbers of graders on the predictive performance of the same DL architecture and repeated each experiment three times. The largest training dataset delivered a prediction performance close to that of human experts. All DL systems utilized were highly consistent. Nevertheless, the DL under‐performers could not achieve any further autonomous improvement even after repeated training. Furthermore, a quantifiable linear relationship between ground truth ambiguity and the beneficial effect of having a larger amount of ground truth data was detected and marked as the more‐ground‐truth effect.

Publisher

Wiley

Subject

General Physics and Astronomy,General Engineering,General Biochemistry, Genetics and Molecular Biology,General Materials Science,General Chemistry

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