Main Page
Contents
- 1 Welcome to the Cancer Deep Phenotype Extraction (DeepPhe) project
- 2 Who We Are
- 3 Funding
- 4 Publications and presentations crediting DeepPhe
- 5 DeepPhe Software
- 6 DeepPhe Gold Set
- 7 Qualitative Interviews
- 8 Project materials/ WIKIs to tasks
- 9 Communication
- 10 Scrum Sprints
- 11 Meeting Notes
- 12 Licensing
- 13 Contact
- 14 Getting started
Welcome to the Cancer Deep Phenotype Extraction (DeepPhe) project
Our goal is to develop novel methods for information extraction to facilitate automatic/unsupervised/minimally supervised extraction of specific discrete cancer-related data from various types of unstructured electronic medical records.
Who We Are
- Boston Childrens Hospital/Harvard Medical School
- Guergana Savova (MPI)
- Timothy Miller
- Sean Finan
- David Harris
- Chen Lin
- past members -- Dmitriy Dligach (currently faculty at Loyola University, Chicago), Pei Chen, James Masanz
- University of Pittburgh
- Harry Hochheiser (MPI)
- Zhou Yuan
- past members - through June 2017: Rebecca Crowley Jacobson (MPI), Roger Day, Adrian Lee, Robert Edwards, John Kirkwood, Kevin Mitchell, Eugene Tseytlin, Girish Chavan, Melissa Castine; Liz Legowski (through Jan 2015), Olga Medvedeva, Mike Davis
- Vanderbilt University
- Jeremy Warner (MPI)
- Alicia Beeghly-Fadiel
- Dana-Farber Cancer Institute
- Elizabeth Buchbinder
- Kentucky Cancer Registry
- Eric Durbin (MPI)
- Isaac Hands
- Jong Jeong
- Venkata Kavuluru
Funding
The project described is supported by the National Cancer Institute at the US National Institutes of Health. It is part of the NCI's Informatics Technology for Cancer Research (ITCR) Initiative (http://itcr.nci.nih.gov/) The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health.
Publications and presentations crediting DeepPhe
1 Lin, Chen; Miller, Timothy; Dligach, Dmitriy; Amiri, Hadi; Bethard, Steven and Savova, Guergana. 2018. Self-training improves Recurrent Neural Networks performance for Temporal Relation Extraction. LOUHI 2018: The Ninth International Workshop on Health Text Mining and Information Analysis. Oct 31-Nov 1, 2018. Brussels, Belgium. https://aclanthology.coli.uni-saarland.de/papers/W18-5619/w18-5619 2 Malty, Andrew M., Jain, Sandeep K., Yang, Peter C., Harvey, Krysten, Warner, Jeremy L. Computerized approach to creating a systematic ontology of hematology/oncology regimens. JCO Clinical Cancer Informatics. 2018 May 11. http://ascopubs.org/doi/full/10.1200/CCI.17.00142 3 Miller, Timothy; Dligach, Dmitriy; Bethard, Steven; Lin, Chen; Savova, Guergana. 2017. Towards Generalizable Entity-Centric Clinical Coreference Resolution. Journal of Biomedical Informatics. Vol. 69, May 2017, pp. 251-258. https://doi.org/10.1016/j.jbi.2017.04.015; http://www.sciencedirect.com/science/article/pii/S1532046417300850 4 Castro SM, Tseytlin E, Medvedeva O, Mitchell K, Visweswaran S, Bekhuis T, Jacobson RS. 2017. Automated annotation and classification of BI-RADS assessment from radiology reports. J Biomed Inform. 2017 May;69:177-187. doi: 10.1016/j.jbi.2017.04.011. PMID: 28428140; PMCID: PMC5706448 [Available on 2018-05-01] DOI:10.1016/j.jbi.2017.04.011 https://www.sciencedirect.com/science/article/pii/S1532046417300813 5 Lin, Chen; Miller, Timothy; Dligach, Dmitriy; Bethard, Steven; Savova, Guergana. 2017. Representations of Time Expressions for Temporal Relation Extraction with Convolutional Neural Networks. BioNLP workshop at the Association for Computational Linguistics conference. Vancouver, Canada, Friday August 4, 2017. https://aclanthology.coli.uni-saarland.de/papers/W17-2341/w17-2341 6 Miller, T; Bethard, S; Amiri, H; Savova, G. 2017. Unsupervised Domain Adaptation for Clinical Negation Detection. BioNLP workshop at the Association for Computational Linguistics conference. Vancouver, Canada, Friday August 4, 2017 https://aclanthology.coli.uni-saarland.de/papers/W17-2320/w17-2320 7 Savova, G., Tseytlin, E., Finan, S., Castine, M., Miller, T., Medvedeva, O., Haris, D., Hochheiser, H., Lin, C., Chavan, G., Jacobson R. 2017. DeepPhe - A Natural Language Processing System for Extracting Cancer Phenotypes from Clinical Records. Annual Symposium of the American Medical Informatics Association (AMIA). Nov 2017. Washington DC https://amia2017.zerista.com/event/member/389439 8 Savova, G., Tseytlin, E., Finan, S., Castine, M., Miller, T., Medvedeva, O., Haris, D., Hochheiser, H., Lin, C., Chavan, G., Jacobson R. 2017. DeepPhe: A Natural Language Processing System for Extracting Cancer Phenotypes from Clinical Records. Cancer Research 77(21), November 2017 DOI: 10.1158/0008-5472.CAN-17-0615. https://www.ncbi.nlm.nih.gov/pubmed/29092954 9 Dligach, Dmitriy; Miller, Timothy; Lin, Chen; Bethard, Steven; Savova, Guergana. 2017. Neural temporal relation extraction. European Chapter of the Association for Computational Linguistics (EACL 2017). April 3-7, 2017. Valencia, Spain. https://aclanthology.coli.uni-saarland.de/papers/E17-2118/e17-2118 10 Chen, Lin; Miller, Timothy; Dligach, Dmitriy; Bethard, Steven; Savova, Guergana. 2016. Improving Temporal Relation Extraction with Training Instance Augmentation. BioNLP workshop at the Association for Computational Linguistics conference. Berlin, Germany, Aug 2016 https://aclanthology.coli.uni-saarland.de/papers/W16-2914/w16-2914 11 Hochheiser, Harry; Castine, Melissa; Harris, David; Savova, Guergana; Jacobson, Rebecca. 2016. An Information Model for Computable Cancer Phenotypes. BMC Medical Informatics and Decision Making. https://bmcmedinformdecismak.biomedcentral.com/articles/10.1186/s12911-016-0358-4 https://www.ncbi.nlm.nih.gov/pubmed/27629872 12 Ethan Hartzell, Chen Lin. 2016. Enhancing Clinical Temporal Relation Discovery with Syntactic Embeddings from GloVe. International Conference on Intelligent Biology and Medicine (ICIBM 2016). Medical Informatics Thematic Track. December 2016, Houston, Texas, USA 13 Dmitriy Dligach, Timothy Miller, Guergana K. Savova. 2015. Semi-supervised Learning for Phenotyping Tasks. AMIA Annual Symposium. Nov 2015, San Francisco, CA. https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4765699/ 14 Chen, Lin; Dligach, Dmitriy; Miller, Timothy; Bethard, Steven; Savova, Guergana. 2015. Multilayered temporal modeling for the clinical domain. Journal of the American Medical Informatics Association. 2016 Mar;23(2):387-95. doi: 10.1093/jamia/ocv113 https://www.ncbi.nlm.nih.gov/pubmed/26521301
Peer-reviewed other: 15 Beeghly-Fadiel, Alicia; Warner, Jeremy; Finan, Sean; Masanz, James; Hochheiser, Harry; Savova, Guergana. (under review). Deep Phenotype Extraction to Facilitate Cancer Research: Extending DeepPhe to Ovarian Cancer. American Association for Cancer Research (AACR) 2019. March 29-April 3, 2019. Atlanta, GA. 16 Yuan, Zhou; Finan, Sean; Warner, Jeremy; Savova, Guergana; Hochheiser, Harry. 2018. Toward Longitudinal Visual Analytics for Cancer Patient Trajectories Extracted from Clinical Text. 2018 Workshop on Visual Analytics and Healthcare, Demonstration Presentation. AMIA 2018, Nov 3-7, 2018. San Francisco, CA. 17 Chen Lin, Timothy A. Miller, Hadi Amiri, David Harris, Samuel M. Rubinstein, Jeremy Warner, Guergana K. Savova, Ph.D. 2018. Classification of electronic medical records of breast cancer and melanoma patients into clinical episodes. 30th Anniversary AACR Special Conference Convergence: Artificial Intelligence, Big Data, and Prediction of Cancer. Oct 14-17, 2018. Newport, RI, USA. 18 Warner, Jeremy; Elhadad, Noemie; Bastarache, Lisa; Gotz, David; Savova, Guergana. 2018. Panel - Didactic: Computable Longitudinal Patient Trajectories. Annual Symposium of the American Medical Informatics Association. November, 2018. San Francisco, CA. (peer-reviewed panel) 19 Savova G, Tseytlin E, Finan S, Castine M, Miller T, Medvedeva O, Harris D, Hochheiser H, Lin C, Chavan G, Warner JL, Jacobson R. DeepPhe – a natural language processing system for extracting cancer phenotypes from clinical records. Annual conference of the North American Association of Central Cancer Registries (NAACCR). Pittsburgh, PA. 20 Warner JL, Harris D, Rubinstein S, Finan S, Lin C, Miller T, Amiri H, Hochheiser H, Savova G. Capturing high-resolution temporal cancer phenotypes using DeepPhe. Annual conference of the North American Association of Central Cancer Registries (NAACCR). Pittsburgh, PA. 21 Yang PC, Malty A, Jain SK, Harvey K, Finan S, Warner JL. 2018. A Comprehensive Ontology of Hematology/Oncology Regimens. Annual conference of the North American Association of Central Cancer Registries (NAACCR). Pittsburgh, PA. 22 Hochheiser H; Jacobson R; Washington N; Denny J; Savova G. 2015. Natural language processing for phenotype extraction: challenges and representation. AMIA Annual Symposium. Nov 2015, San Francisco, CA. (peer-reviewed panel)
Invited presentations: 23 Savova, Guergana. 2019. Cancer Deep Phenotype Extraction from Electronic Medical Records. Molecular Med Tri-con. March 10-15, 2019. San Francisco, CA, USA 24 Savova G. 2018. Software and Research Challenges for Clinical NLP. Dana Farber Cancer Institute; 2018 October; Boston, MA, USA. 25 Savova, Guergana. 2018. NLP in the clinical domain. UPMC. Sept 28, 2018. Pittsburgh, PA, USA 26 Savova, Guergana. 2018. Cancer Deep Phenotype Extraction form Electronic Medical Records (DeepPhe). College of American Pathologists Pathology Electronic Reporting meeting (CAP PERT). July 29, 2018. Montreal, QB, CA. 27 Warner, Jeremy. 2018. A Comprehensive Ontology of Hematology/Oncology Regimens. College of American Pathologists Pathology Electronic Reporting meeting (CAP PERT). July 29, 2018. Montreal, QB, CA. 28 Savova, Guergana. 2018. Cancer Deep Phenotype Extraction form Electronic Medical Records (DeepPhe). Astra Zeneca. July 7, 2018. Waltham, MA, USA. 29 Savova, G; Miller, T. 2018. DeepPhe and Extraction of Oncology Patient Phenotypes from Unstructured Text Using NLP and Other AI Tools. Presentation to Dana Farber Cancer Institute. January 24 2018. Boston, MA. 30 Warner, Jeremy. 2017. Supporting cancer registries through automated extraction of pathology and chemotherapy regimen information.” CDC/NCI/FDA/VA Clinical Natural Language Processing Workshop. Atlanta, GA. 31 Savova, Guergana. 2017. Select Applications of Natural Language Processing in Biomedicine. Natural Language Processing Symposium, Boston University, Boston, MA. November, 2017. 32 Jacobson, Rebecca. 2017. Invited presentation at Ohio State University James Cancer Center Grand Rounds, January 20th, 2017 33 Jacobson, Rebecca. 2017. Invited presentation at Case Western University Comprehensive Cancer Center Seminar Series, March 10th, 2017 34 Jacobson, Rebecca. 2016. Invited presentation of cTAKES and DeepPhe to NCI in January, 2016. Gaithersburg, MD 35 Jacobson, Rebecca. 2016. Invited presentation in CBIIT Speaker Series, February 17, 2016. Gaithersburg, MD 36 Jacobson, Rebecca. 2016. Invited presentation at University of Pittsburgh Cancer Informatics (UPCI) External Advisory Board, March 8, 2016 37 Finan, Sean. 2016. cTAKES/deepPhe presentation at the ITCR workshop at CI4CC in Napa, CA 38 Jacobson, Rebecca. 2016. Invited presentation at SEER PI meeting in New Mexico, March 16, 2016 39 Jacobson, Rebecca. 2016. Invited presentation at University of Michigan Department of Learning Health Sciences, April 6th, 2016 40 Jacobson, Rebecca. 2016. Invited presentation at Pathology Informatics 2016, Pittsburgh PA, May 24th, 2016 41 Jacobson, Rebecca. 2016. Invited presentation at University of Pittsburgh Cancer Institute Scientific Retreat, Greensburg, PA, June 16th, 2016 42 Jacobson, Rebecca and Savova, Guergana. 2016. Invited presentation at SEER meeting in Gaithersburg, MD, December 10, 2016 43 Jacobson, Rebecca and Savova, Guergana. Invited presentation of cTAKES/DeepPhe to NCI in October, 2015
Other: 44 Interview with Uduak Thomas of the GenomeWeb magazine. May 16, 2014. https://www.genomeweb.com/informatics/upitt-bch-team-use-696k-grant-develop-nlp-based-tools-extract-phenotype-data-emr#.W3HF1NJKi70 45 Project website: cancer.healhnlp.org 46 Github repository: https://github.com/DeepPhe 47 Listed on the ITCR website, Tools: https://itcr.cancer.gov/informatics-tools
DeepPhe Software
DeepPhe release is available in
DeepPhe Gold Set
- Process for Deidentification of Source Documents.
- Process for Deidentification of Source Documents.
- Process for Deidentification of Source Documents.
- Process for Selection of Gold Set Source Documents.
- DeepPhe UPMC Training/Development/Test splits
- training set:
- all documents for Breast Cancer patients 03, 11, 92, 93 for a total of 48 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev\DeepPhe Gold Phenotype Annotations_v2.xlsm
- all documents for Breast Cancer patients extended 04,05,06,09,10,12,13,14,18,19,20,22,23,26,27,30,31,32,33,34,35,40,41,42,43,38,39,46,47 for a total of 954 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev\DeepPhe Gold Phenotype Annotations_v2.xlsm
- all documents for Melanoma patients 05, 06, 18, 19, 25, 28, 30, 33, 34, 42, for a total of 233 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\melanoma); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\melanoma\trainSet\DeepPhe DevSet Phenotype Annotations.xlsm
- all documents for Ovarian Cancer patients 3, 4, 7, 8, 12, 13, 16, 17, 18, 20, 24, 25, 26, 27, 30, 31, 32, 34, 37, 38, 41, 42, 43, 44, 46, 48 for a total of 1675 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\ovarian\final_dataset\trainSet); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\ovarian\final_dataset\trainSet\DeepPhe_ovCa_Train_Set_Phenotype_Annotations_GOLD.xlsm
- development set:
- all documents for Breast Cancer patients 02, 21 for a total of 42 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev\DeepPhe Gold Phenotype Annotations_v2.xlsm
- all documents for Breast Cancer patients extended 01,15,16,17,28,29,36,37,44,45,07,08,24,25 for a total of 457 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedDev\DeepPhe Gold Phenotype Annotations_v2.xlsm
- all documents for Melanoma patients 07, 32, 43 for a total of 215 (processed only 211 docs) documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\melanoma\devSet); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\melanoma\devSet\DeepPhe DevSet Phenotype Annotations.xlsm
- all documents for Ovarian Cancer patients 9, 11, 19, 28, 29, 35, 39, 47 for a total of 562 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\ovarian\final_dataset\devSet); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\ovarian\final_dataset\devSet\DeepPhe_ovCa_Dev_Set_Phenotype_Annotations_GOLD.xlsm
- test set:
- all documents for Breast Cancer patients 01 (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedTest); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedTest\DeepPhe Test Phenotype Annotations v2.xlsm
- all documents for Breast Cancer extended for patients 01, 02, 09,10,12,15,17,18,19,20,23,24,27,32,36,39,44,63, 76, 100, 101, 104, 106, 109, 111, 114, 115, 117, 118, 119, 120, 121, 123, 125, 126, 129, 130, 132, 136, 137, 138, 142, 143, 155, 156, 158, 174, 181, 189, 197 for phenotyping level testing use (\\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedTest\); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\breast\UPMCextendedTest\DeepPhe Test Phenotype Annotations v2.xlsm
- all documents for Melanoma patients 02, 03, 11, 12, 14, 16, 24, 27, 41, 44 for a total of 229 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\melanoma\testSet); gold annotations are \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\melanoma\testSet\DeepPhe TestSet Phenotype Annotations.xlsm
- all documents for Ovarian Cancer patients 15, 21, 33, 36, 40, 45, 49, 50 for a total of 559 documents (in BCH \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\ovarian\final_dataset\testSet); gold annotations are in \\rc-fs\chip-nlp\Public\DeepPhe\DeepPheDatasets\ovarian\final_dataset\testSet\DeepPhe_ovCa_Test_Set_Phenotype_Annotations_GOLD.xlsm
- use the training set for developing the algorithms and the development set to report results and error analysis. The test set will be used only for the final evaluation to go in publications.
- training set:
- SEER Project Train/Dev/Test Splits
- Clinical Genomics Gold Set
Qualitative Interviews
- Detailed Stakeholder Descriptions.
- Interview Protocol
- Contextual Design Notes
- Notes on interviews with informants
Project materials/ WIKIs to tasks
- Liquid Planner link (project management): https://app.liquidplanner.com/space/26220/dashboard
- Templates for describing stakeholders.
- Software development policies and repositories.
- Data Repository and Policies.
- Adopted Standards and Conventions for NLP annotations (task 1.4.2)
- Gold Set Selection
- Entity Mention and Template Evaluation Statistics
- Phenotype Evaluation Statistics (with DeepPhe v1)
- Phenotype Evaluation Statistics (with DeepPhe v2)
- Modeling
- Phenotyping Rules
- Breast Cancer Model
- Melanoma Model
- Ovarian Cancer Model
- Cancer phenotype modeling notes
- Layered cancer phenotyping
- FHIR modeling
- Domain Modeling Notes/Questions
- Validation of models with domain experts
- Competency questions to be used for validation of models.
- Analysis tasks potentially requiring episode labels
- Representations of the models.
- Historical pages
- CEM Cancer phenotype models: models describing the original CEM Models
- Value decomposition issues https://docs.google.com/document/d/1riAHoLRdEmp4Ah9Z8NXN-ABkcAW9nnfNXQ5_md5rgYs/edit
- Visual Analytics
- Informant Interviews
- Technical Infrastructure
- Deep Learning
- Cross document coreference
- Summarization Logic
- Architecture
- Software Best Practices
- Gold standard annotations
- Licensing
- RESEARCH: Coreference
- RESEARCH: Relation extraction
- RESEARCH: Temporal relations
- RESEARCH: Human-Computer interaction
- RESEARCH: BiRADS
- Demo in June 2016
- SEER Project Technical Requirements
- SEER Project Train/Dev/Test Splits
- Paper Ideas 2016
- Year 2 goals (May 2015-April 2016)
- Year 3 goals and Publication Ideas (May 2016-April 2017)
- Year 4 goals (May 2017-April 2018)
- Year 5 goals (May 2018-April 2019)
Presentations
- How to effectively use LiquidPlanner for DeepPhe: https://www.dropbox.com/s/1f6nkhx3yxh4v9q/LiquidPlanner%20for%20Deep-Phe.pptx
- DeepPhe Rule Driven Architectures: https://www.dropbox.com/s/hl70zkvjs1ftt5a/DeepPhe%20Rule%20Driven%20Architectures.pptx
Communication
- Weekly team meetings
- Tools we use for communication are listed in our Communications Plan .
Scrum Sprints
- Our Scrum Process
- Sprint Story Boards
- Standup Form
- Sprint 1
- Sprint 2
- Sprint 3
- Sprint 4
- Sprint 5
- Sprint 6
- Sprint 7
- Sprint 8
- Sprint 9, Feb 9 - March 15, 2016
- Sprint 10, March 15 - April 12, 2016
- Sprint 11, April 13 - May 10, 2016
- Sprint 12, May 11 - June 7, 2016
- Sprint 13, June 26 - July 26, 2016
- Sprint 14, July 26 - August 30, 2016
- Sprint 15, August 31 - September 27, 2016
- Sprint 16, September 27 - October 25, 2016
- Sprint 17, October 25 -- November 29, 2016
- Sprint 18, November 30, 2016 -- January 3, 2017
- Sprint 19, January 3 -- January 31, 2017
- Sprint 20, February 1 - February 28, 2017
- Sprint 21, March 1 - April 4, 2017
- Sprint 22, April 5 - April 26, 2017
- Sprint 23, April 26 - May 24, 2017
- Sprint 24, June 6 - July 11, 2017
- Sprint 25, July 12 - Aug 16, 2017
- Sprint 26, Aug 17 - Sept 20, 2017
- Sprint 27, Sept 21 - Oct 18, 2017
- Sprint 28, Oct 19 - Nov 15, 2017
- Sprint 29, Nov 15 - Dec 13, 2017
- Sprint 30, Dec 13, 2017 - Jan 17, 2018
- Sprint 31, Jan 17 - Feb 14, 2018
- Sprint 32, Feb 15 - March 14, 2018
- Sprint 33, March 14 - April 11, 2018
- Sprint 34, April 12 - May 9, 2018
- Sprint 35, May 10 - June 6, 2018
- Sprint 36, June 6 - July 11, 2018
- Sprint 37, July 12 - August 15, 2018
- Sprint 38, Aug 16 - Sept 12, 2018
- Sprint 39, Sept 13 - Oct 10, 2018
- Sprint 40, Oct 11 - Nov 14, 2018
- Sprint 41, Nov 15 - Dec 12, 2018
- Sprint 42, Dec 13, 2018 - Jan 9, 2019
- Sprint 43, Jan 10 - Feb 6, 2019
- Sprint 44, Feb 7 - March 6, 2019
- Sprint 45, March 7 - April 10, 2019
- Sprint 46, April 10 - May 8, 2019
- Sprint 47, May 9 - June 5, 2019
Meeting Notes
- January 25, 2018 Rules and Ontology Development Meeting
- January 18, 2018 Rules and Ontology Development Meeting
- January 11, 2018 Rules and Ontology Development Meeting
- January 5, 2018 Rules and Ontology Development Meeting
- December 21, 2017 Rules and Ontology Development Meeting
- December 14, 2017 Rules and Ontology Development Meeting
- November 16, 2017 Rules and Ontology Development Meeting
- November 9, 2017 Rules and Ontology Development Meeting
- November 2, 2017 Rules and Ontology Development Meeting
- October 24, 2017 Rules and Ontology Development Meeting
- October 17, 2017 Rules and Ontology Development Meeting
- October 12, 2017 Rules and Ontology Development Meeting
- October 5, 2017 Melanoma Rules and Ontology Meeting
- September 28, 2017 Melanoma Rules and Ontology Meeting
- September 14, 2017 Melanoma Rules and Ontology Meeting
- September 7, 2017 Melanoma Rules and Ontology Meeting
- August 24, 2017 Melanoma Rules Meeting
- August 17, 2017 Melanoma Rules Meeting
- August 10, 2017 Melanoma Rules Meeting
- August 3, 2017 Melanoma Rules Meeting
- August 27, 2015 Research Meeting
- August 3, 2015 Modeling Meeting
- July 20, 2015 Modeling Meeting
- July 7, 2015 Bi-weekly team meeting
- July 1, 2015 Scrum Sprint - 1
- June 26, 2015 Software architecture meeting
- June 23, 2015 Bi-weekly team meeting
- June 9, 2015 Bi-weekly team meeting
- May 12, 2015 Team meeting:DeepPhe demo
- May 5, 2015 Team meeting:DeepPhe demo
- April 28, 2015 Bi-weekly team meeting
- April 13, 2015 Bi-weekly team meeting
- March 17, 2015 Bi-weekly team meeting
- February 23, 2015 Model prioritization meeting
- February 17, 2015 Bi-weekly team meeting
- February 3, 2015 Bi-weekly team meeting
- January 28, 2015 BCH team meeting
- January 20, 2015 Bi-weekly team meeting
- January 6, 2015 Bi-weekly team meeting
- December 9, 2014 BCH team meeting
- December 9, 2014 Bi-weekly team meeting
- November 20, 2014 BCH team meeting
- November 11, 2014 Bi-weekly team meeting
- November 11, 2014 BCH team meeting
- November 4, 2014 BCH team meeting
- November 3, 2014 PI meeting
- October 27, 2014 Bi-weekly team meeting: Avillach's presentation on tranSMART, cTAKES and PCORI
- October 14, 2014 Bi-weekly team meeting: agenda and notes
- September 30, 2014 Bi-weekly team meeting: agenda and notes
- September 2, 2014 Bi-weekly team meeting: agenda and notes
- August 19, 2014 Bi-weekly team meeting: agenda and notes
- August 5, 2014 Bi-weekly team meeting: agenda and notes
- July 22, 2014 Bi-weekly team meeting: agenda and notes
- July 15, 2014 Bi-weekly team meeting: agenda and notes
- July 10, 2014 Hochheiser visit to Savova group
- June 24, 2014 Bi-weekly team meeting: agenda and notes
- June 10, 2014 Bi-weekly team meeting: agenda and notes
- June 3, 2014 All hands kick-off meeting
- May 08, 2014 NCIP collaboration with UT (Bermstram/Xu)
Licensing
Licensing policies for DeepPhe software and ontological models.
Contact
If you need assistance or if you have further questions about the project, contact us at the DeepPhe group.
Getting started
Consult the User's Guide for information on using the wiki software.