Deep learning-assisted literature mining for in vitro radiosensitivity data

被引:8
|
作者
Komatsu, Shuichiro [1 ]
Oike, Takahiro [1 ]
Komatsu, Yuka [1 ]
Kubota, Yoshiki [2 ]
Sakai, Makoto [2 ]
Matsui, Toshiaki [1 ]
Nuryadi, Endang [1 ,3 ]
Permata, Tiara Bunga Mayang [1 ,3 ]
Sato, Hiro [1 ]
Kawamura, Hidemasa [2 ]
Okamoto, Masahiko [2 ]
Kaminuma, Takuya [2 ]
Murata, Kazutoshi [2 ]
Okano, Naoko [1 ]
Hirota, Yuka [1 ]
Ohno, Tatsuya [2 ]
Saitoh, Jun-ichi [4 ]
Shibata, Atsushi [5 ]
Nakano, Takashi [1 ,2 ]
机构
[1] Gunma Univ, Grad Sch Med, Dept Radiat Oncol, 3-39-22 Showa Machi, Maebashi, Gunma 3718511, Japan
[2] Gunma Univ, Heavy Ion Med Ctr, Gunma, Japan
[3] Univ Indonesia, Fac Med, Dr Cipto Mangunkusumo Natl Gen Hosp, Dept Radiotherapy, Jakarta, Indonesia
[4] Univ Toyama, Fac Med, Dept Radiat Oncol, Toyama, Japan
[5] Gunma Univ, Gunma Univ Initiat Adv Res GIAR, Gunma, Japan
关键词
Clonogenic assays; Radiosensitivity; Deep learning; Convolutional neural networks; Radiation oncology; CANCER; CLASSIFICATION; ASSAY;
D O I
10.1016/j.radonc.2019.07.003
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background and purpose: Integrated analysis of existing radiosensitivity data obtained by the gold-standard clonogenic assay has the potential to improve our understanding of cancer cell radioresistance. However, extraction of radiosensitivity data from the literature is highly labor-intensive. To aid in this task, using deep convolutional neural networks (CNNs) and other computer technologies, we developed an analysis pipeline that extracts radiosensitivity data derived from clonogenic assays from the literature. Materials and methods: Three classifiers (C1-3) were developed to identify publications containing radiosensitivity data derived from clonogenic assays. C1 uses Faster Regions CNN with Inception Resnet v2 (fRCNN-IRv2), VGG-16, and Optical Character Recognition (OCR) to identify publications that contain semi-logarithmic graphs showing radiosensitivity data derived from clonogenic assays. C2 uses fRCNN-IRv2 and OCR to identify publications that contain bar graphs showing radiosensitivity data derived from clonogenic assays. C3 is a program that identifies publications containing keywords related to radiosensitivity data derived from clonogenic assays. A program (iSF(2)) was developed using Mask RCNN and OCR to extract surviving fraction after 2-Gy irradiation (SF2) as assessed by clonogenic assays, presented in semi-logarithmic graphs. The efficacy of C1-3 and iSF(2) was tested using seven datasets (1805 and 222 publications in total, respectively). Results: C1-3 yielded sensitivity of 91.2% +/- 3.4% and specificity of 90.7% +/- 3.6%. iSF(2) returned SF2 values that were within 2.9% +/- 2.6% of the SF2 values determined by radiation oncologists. Conclusion: Our analysis pipeline is potentially useful to acquire radiosensitivity data derived from clonogenic assays from the literature. (C) 2019 The Authors. Published by Elsevier B.V.
引用
收藏
页码:87 / 93
页数:7
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