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Code-free deep learning for multi-modality medical image classification
Authors
K Balaskas
AK Denniston
+12 more
L Faes
D Ferraz
SG Finlayson
Z Guan
PA Keane
H Khalid
E Korot
X Liu
G Moraes
N Pontikos
SK Wagner
G Zhang
Publication date
1 March 2021
Publisher
Abstract
© 2021, The Author(s). A number of large technology companies have created code-free cloud-based platforms that allow researchers and clinicians without coding experience to create deep learning algorithms. In this study, we comprehensively analyse the performance and featureset of six platforms, using four representative cross-sectional and en-face medical imaging datasets to create image classification models. The mean (s.d.) F1 scores across platforms for all model–dataset pairs were as follows: Amazon, 93.9 (5.4); Apple, 72.0 (13.6); Clarifai, 74.2 (7.1); Google, 92.0 (5.4); MedicMind, 90.7 (9.6); Microsoft, 88.6 (5.3). The platforms demonstrated uniformly higher classification performance with the optical coherence tomography modality. Potential use cases given proper validation include research dataset curation, mobile ‘edge models’ for regions without internet access, and baseline models against which to compare and iterate bespoke deep learning approaches
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oai:eprints.ucl.ac.uk.OAI2:101...
Last time updated on 23/03/2021