Title
Development of training environment for deep learning with medical images on supercomputer system based on asynchronous parallel Bayesian optimization
Abstract
Recently, deep learning has been exploited in the field of medical image analysis. However, the training of deep learning models with medical images is time-consuming since most medical image data are three-dimensional volumes or high-resolution two-dimensional images. Moreover, the optimization of numerous hyperparameters strongly affects the performance of deep learning. If a framework for training deep learning with hyperparameter optimization on a supercomputer system can be realized, it is expected to accelerate the training of deep learning with medical images. In this study, we described our novel environment for training deep learning with medical images on the supercomputer system in our institute (Reedbush-H supercomputer system) based on asynchronous parallel Bayesian optimization. We trained two types of automated lesion detection application in a constructed environment. The constructed environment enabled us to train deep learning with hyperparameter tuning in a short time.
Year
DOI
Venue
2020
10.1007/s11227-020-03164-7
The Journal of Supercomputing
Keywords
DocType
Volume
Deep learning, Asynchronous parallel Bayesian optimization, Hyperparameter optimization, Medical image
Journal
76
Issue
ISSN
Citations 
9
0920-8542
0
PageRank 
References 
Authors
0.34
0
12
Name
Order
Citations
PageRank
Nomura, Y.1319.51
Issei Sato233141.59
Toshihiro Hanawa320026.59
Shouhei Hanaoka4267.56
Takahiro Nakao532.49
Tomomi Takenaga642.58
Tetsuya Hoshino711.04
Yuji Sekiya800.34
Soichiro Miki9156.44
Takeharu Yoshikawa10267.93
Naoto Hayashi11206.38
Osamu Abe1296.36