Ontology highlight
ABSTRACT:
SUBMITTER: Hekler A
PROVIDER: S-EPMC7218064 | biostudies-literature | 2020
REPOSITORIES: biostudies-literature
Hekler Achim A Kather Jakob N JN Krieghoff-Henning Eva E Utikal Jochen S JS Meier Friedegund F Gellrich Frank F FF Upmeier Zu Belzen Julius J French Lars L Schlager Justin G JG Ghoreschi Kamran K Wilhelm Tabea T Kutzner Heinz H Berking Carola C Heppt Markus V MV Haferkamp Sebastian S Sondermann Wiebke W Schadendorf Dirk D Schilling Bastian B Izar Benjamin B Maron Roman R Schmitt Max M Fröhling Stefan S Lipka Daniel B DB Brinker Titus J TJ
Frontiers in medicine 20200506
Recent studies have shown that deep learning is capable of classifying dermatoscopic images at least as well as dermatologists. However, many studies in skin cancer classification utilize non-biopsy-verified training images. This imperfect ground truth introduces a systematic error, but the effects on classifier performance are currently unknown. Here, we systematically examine the effects of label noise by training and evaluating convolutional neural networks (CNN) with 804 images of melanoma a ...[more]