Science belongs to everyone. Every effort should be made to allow anyone to participate in the creation of scientific knowledge. This project was motivated by the desire to expand open innovation. It is a response offered to recomendations in this report. The Centers for Disease Control and Prevention (CDC) used crowdsourcing to improve a Natural Language Processing (NLP) Machine Learning (ML) algorithm to code unstructured work-related injury narratives to OIICS "two-digit event" codes. An intra- and extra-mural marathon competition was held in 2019--for the first time in CDC's history. These algorithms are the top-five performing NLP solutions created by the crowdsourcing competitions. The project was made prossible by funding from NIOSH-DSR and the CDC-OS-OTI. A multitute of scientific workgroups at the CDC significantly contributed towards the promotion of the project and the recruitment of intra-mural competitors. Our effort was promoted by FCPCCS and the AI CoP. Our team has participated with multiple outlets on interviews and was invited by MIT's J-Clinic and Harvard's LISH to speak about innovative project. Our team, the //m_BrainGineers, is deeply grateful to the funding parties and all those who dedicated their time to helping achieve this amazing success. If you have any questions or comments, please send us an email.
Our team of 16 federal employees from 7 federal agencies was led by Dr. Siordia and Dr. Bertke in close collaboration with Mr. Measure and Dr. Russ. Federal agencies partipating included the CDC, BLS, NIH, CENSUS, CPSC, FEMA, and the OSHA. All team members contributed and are listed by including their host federal agency and center/institute/office(CIO):
- Carlos Siordia PhD (CDC-NIOSH)
- Steve Bertke PhD (NIOSH-NIOSH)
- Audrey Reichard MPH (CDC-NIOSH)
- Syd Webb PhD (CDC-NIOSH)
- Alexander Measure MS (BLS-OSHS)
- Daniel Russ PhD (NIH-CIT)
- Stacey Marovich MHI (CDC-NIOSH)
- Kelly Vanoli BS (CDC-NIOSH)
- Mick Ballesteros PhD (CDC-NCIPC)
- Jeff Purdin MS (CDC-NIOSH)
- Melissa Friesen PhD (NIH-NCI)
- Machell Town PhD (CDC-NCCDPHP)
- Lynda Laughlin PhD (CENSUS-SEHSD)
- Tom Schroeder MS (CPSC-DHIDS)
- Jim Heeschen MS (FEMA-USFA-NFDC)
- Miriam Schoenbaum PhD (OSHA-OSA)
- Ari Miniño MPH (CDC-NCHS)
The CDC has been using machine learning for decades as discussed in this blog. Our project represents the first time the CDC hosted an intramural NLP marathon. The 19 intra-mural competitors are each extraordinary analyst! For our competition, they had the courage to put their reputation on the line. They procured management approval for participation and devoted many hours to developing their solution. Even those new to NLP performed admirably. We are grateful for their contributions. More information on 19 competitors in 9 teams is provided in this announcement and this blog. Competitors had to code unstructured work-related injury narratives to 48 unique OIICS two-digit "event" codes. Competitors has access to a NEISS-Work data files from 2012 through 2016 with 191,835 observations. Results are listed by ranking (including weighted F1 score):
- (wF1=87.77) Scott Lee PhD in CDC's Center for Surveillance, Epidemiology, and Laboratory Services (CSELS) used an ensemble classifier blending four BERT neural network models.
- (wF1=87.15) Mohammed Khan MS and Bill Thompson PhD from CDC-NCHHSTP's Division of Viral Hepatitis (DVH) used Recurrent Neural Network with Fastai on Codalab.
- (wF1=84.47) Jasmine Varghese MS, Benjamin Metcalf MA, and Yuan Li PhD from CDC-NCIRD's Division of Bacterial Diseases (DBD) used Regularized Logistic Regression with custom word corpus.
- (wF1=84.45) Keming Yuan MS from CDC-NCIPC's Division of Violence Prevention (DVP) used Long Short-Term Memory Recurrent Neural Network.
- (wF1=83.32) Naveena Yanamala PhD from CDC-NIOSH's Health Effects Laboratory Division (HELD) used Linear Support Vector Model post custom standardization.
- (wF1=82.75) Li Lu MD PhD from CDC's Office of the Chief Operating Officer (OCOO) used an ensemble classifier using Regularized Logistic Regression, Multi-Layer Perceptron, and Linear Support Vector Models.
- (wF1=81.47) Joan Braithwaite MSPH in CDC's National Center for Chronic Disease Prevention & Health Promotion (NCCDPHP) used Linear Support Vector Model post lemmatization.
- (wF1=81.00) Donald Malec PhD from CDC-NCHS' Division of Research and Methodology (DRM) used Support Vector Machine.
- (wF1=77.45) José Tomás Prieto PhD and Faisal Reza PhD from CDC-CSELS' Division of Scientific Education & Professional Development (DSEPD) used Regularized Logistic Regression—Lasso.
Using an Inter-Agency Agreement (IAA) between NASA's CoECI and NIOSH, TopCoder was contracted and hosted an international competition to develop natural language processing algorithms. We give special thanks to TopCoder's Dr. Contreras and Mr. Reitz. International competition had 388 registrands from 26 countries. About 32% of competitors where from the USA and 21% from India. A total of 20 universities where represented in the competition. We are grateful for willingness to consider our challenge and invest the time required to outperform our "CDC model" (i.e., the model created by Dr. Lee). Competitors used NEISS-Work data from 2012 through 2017, which included a total of 229,820 observations. Competitors had to use unstructured injury narratives to code "two-digit OIICS-event" codes. TopCoder had a total of 961 total unique submissions of algorithms to be scored and ranked. Here are the prize-winners, listed by ranking (including weighted F1 score):
- (wF1=89.20) Raymond van Venetië PhD student in mathemathics from Netherlands used an ensemble classifer with ALBERT and DAN models.
- (wF1=89.12) Pavel Blinov PhD in Computer Science from Russia used used an ensemble classifer with BERT, XLNet, and RoBERTa models.
- (wF1=89.09) Zhuoyu Wei from China used an ensemble classifer that included RoBERTa models.
- (wF1=88.99) Zhensheng Wang PhD biostatistician from USA used an ensemble classifier that included XLNet and BERT models.
- (wF1=88.93) A Sai Sravan a full stack engineer from India used an ensemble classifier that included BERT and RoBERTa models.
Use of these algorithms and associated files does not imply a NASA or CDC endorsement of any one particular product, service or enterprise. U.S. Government logos, including the NASA and CDC logo, cannot be used without express, written permission. These algorithms were designed based on the best available science and should not be modified or altered. Use of these algorithms must be accompanied by the following disclaimer and non-endorsement language:
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