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Deepening into the suitability of using pre-trained models of ImageNet against a lightweight convolutional neural network in medical imaging: an experimental study
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Fecha
2021-09-28
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Editor
PeerJ
Resumen
Transfer learning (TL) has been widely utilized to address the lack of training data for
deep learning models. Specifically, one of the most popular uses of TL has been for
the pre-trained models of the ImageNet dataset. Nevertheless, although these pre-
trained models have shown an effective performance in several domains of
application, those models may not offer significant benefits in all instances when
dealing with medical imaging scenarios. Such models were designed to classify a
thousand classes of natural images. There are fundamental differences between these
models and those dealing with medical imaging tasks regarding learned features.
Most medical imaging applications range from two to ten different classes, where we
suspect that it would not be necessary to employ deeper learning models. This paper
investigates such a hypothesis and develops an experimental study to examine the
corresponding conclusions about this issue. The lightweight convolutional neural
network (CNN) model and the pre-trained models have been evaluated using three
different medical imaging datasets. We have trained the lightweight CNN model
and the pre-trained models with two scenarios which are with a small number of
images once and a large number of images once again. Surprisingly, it has been found
that the lightweight model trained from scratch achieved a more competitive
performance when compared to the pre-trained model. More importantly, the
lightweight CNN model can be successfully trained and tested using basic
computational tools and provide high-quality results, specifically when using medical
imaging datasets.
Descripción
El trabajo forma parte de la tesis doctoral del primer autor, Dr. Laith Alzubaidi, siendo José Santamaría investigador invitado por el autor del artículo en la co-supervisión de dicha tesis doctoral, correspondiendo este con uno de los varios artículos científicos que fueron desarrollados y publicados durante y después de la tesis doctoral del Dr. Alzubaidi.
Palabras clave
Transfer learning, Deep learning, Convolutional neural network, Medical imaging
Citación
Alzubaidi L, Duan Y, Al-Dujaili A, Ibraheem IK, Alkenani AH, Santamaría J, Fadhel MA, Al-Shamma O, Zhang J. 2021. Deepening into the suitability of using pre-trained models of ImageNet against a lightweight convolutional neural network in medical imaging: an experimental study. PeerJ Computer Science 7:e715 https://doi.org/10.7717/peerj-cs.715