Deep learning-assisted literature mining for in vitro radiosensitivity data. (October 2019)
- Record Type:
- Journal Article
- Title:
- Deep learning-assisted literature mining for in vitro radiosensitivity data. (October 2019)
- Main Title:
- Deep learning-assisted literature mining for in vitro radiosensitivity data
- Authors:
- Komatsu, Shuichiro
Oike, Takahiro
Komatsu, Yuka
Kubota, Yoshiki
Sakai, Makoto
Matsui, Toshiaki
Nuryadi, Endang
Permata, Tiara Bunga Mayang
Sato, Hiro
Kawamura, Hidemasa
Okamoto, Masahiko
Kaminuma, Takuya
Murata, Kazutoshi
Okano, Naoko
Hirota, Yuka
Ohno, Tatsuya
Saitoh, Jun-ichi
Shibata, Atsushi
Nakano, Takashi - Abstract:
- Highlights: Integration of published radiosensitivity (RS) data is important but labor-intensive. We developed deep learning-aided programs to extract RS data from the literature. Programs #1–3 screen papers containing RS data obtained by clonogenic assays (CAs). Program #4 extracts CA-derived SF2 data from semi-logarithmic survival curves. Programs #1–4 in combination help scientists mine CA-derived RS data from papers. Abstract: 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 programHighlights: Integration of published radiosensitivity (RS) data is important but labor-intensive. We developed deep learning-aided programs to extract RS data from the literature. Programs #1–3 screen papers containing RS data obtained by clonogenic assays (CAs). Program #4 extracts CA-derived SF2 data from semi-logarithmic survival curves. Programs #1–4 in combination help scientists mine CA-derived RS data from papers. Abstract: 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 (iSF2 ) 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 iSF2 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%. iSF2 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. … (more)
- Is Part Of:
- Radiotherapy and oncology. Volume 139(2019)
- Journal:
- Radiotherapy and oncology
- Issue:
- Volume 139(2019)
- Issue Display:
- Volume 139, Issue 2019 (2019)
- Year:
- 2019
- Volume:
- 139
- Issue:
- 2019
- Issue Sort Value:
- 2019-0139-2019-0000
- Page Start:
- 87
- Page End:
- 93
- Publication Date:
- 2019-10
- Subjects:
- CCLE Cancer Cell Line Encyclopedia -- C1 classifier #1 -- C2 classifier #2 -- C3 classifier #3 -- SF2 clonogenic survival after 2-Gy irradiation -- CNNs convolutional neural networks -- fRCNN-IRv2 Faster Regions CNN with Inception Resnet v2 -- JASTRO Japanese Society for Radiation Oncology -- MeSH Medical Subject Headings -- OCR optical character recognition -- ROs radiation oncologists
Clonogenic assays -- Radiosensitivity -- Deep learning -- Convolutional neural networks -- Radiation oncology
Oncology -- Periodicals
Radiotherapy -- Periodicals
Tumors -- Periodicals
Medical Oncology -- Periodicals
Neoplasms -- radiotherapy -- Periodicals
Radiotherapy -- Periodicals
Radiothérapie -- Périodiques
Cancérologie -- Périodiques
Tumeurs -- Périodiques
Electronic journals
616.9940642 - Journal URLs:
- http://www.sciencedirect.com/science/journal/01678140 ↗
http://www.clinicalkey.com/dura/browse/journalIssue/01678140 ↗
http://www.clinicalkey.com.au/dura/browse/journalIssue/01678140 ↗
http://www.estro.org/ ↗
http://www.elsevier.com/journals ↗
http://www.journals.elsevier.com/radiotherapy-and-oncology/ ↗ - DOI:
- 10.1016/j.radonc.2019.07.003 ↗
- Languages:
- English
- ISSNs:
- 0167-8140
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 7240.790000
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