학술논문

Progress toward a universal biomedical data translator
Document Type
article
Author
Fecho, KaramarieThessen, Anne EBaranzini, Sergio EBizon, ChrisHadlock, Jennifer JHuang, SuiRoper, Ryan TSouthall, NoelTa, CaseyWatkins, Paul BWilliams, Mark DXu, HaoByrd, WilliamDančík, VladoDuby, Marc PDumontier, MichelGlusman, GustavoHarris, Nomi LHinderer, Eugene WHyde, GregJohs, AdamSu, Andrew IQin, GuangrongZhu, QianDougherty, JenniferHuang, ConradMagis, AndrewSmith, BrettCelebi, RemziChen, ZhehuanAzevedo, Ricardo De MirandaEmonet, VincentLee, JayWeng, ChunhuaYilmaz, ArifKim, Keum JooSantos, EugeneTonstad, LucasVeenhuis, LukeYakaboski, ChaseAcevedo, LilianaCarrell, StevenDeutsch, EricGlen, AmyHoffman, AndrewKoslicki, DavidKvarfordt, LindseyLiu, ZhengLiu, ShaopengMa, ChunyuMendoza, LuisMuluka, Arun TejaWomack, FinnWood, EricaRoach, JaredGoel, PrateekWeber, RosinaWilliams, AndrewGormley, JosephZisk, TomHanspers, KristinaHoatlin, MaureenPico, AlexanderRiutta, AndersCallaghan, JacksonXu, ColleenAhalt, Stanley CBalhoff, JimEdwards, StephenHaaland, PerryKnowles, MichaelKrishnamurthy, AshokMandal, MeishaPeden, David BPfaff, EmilySchurman, ShepherdShrivastava, ShalkiYi, HongReilly, JasonKanwar, RichaCox, StevenVaidya, GauravWang, MaxAlkanaq, AhmedCostanzo, MariaKoesterer, RyanFlannick, JasonBurtt, NoelKluge, AlexandriaRubin, IritStrasser, Michael MichiChung, LawrenceKang, JiminMantilla, MichelleMuller, SandrinePersaud, BriaWei, QiBaumgartner, AndrewDai, ChengDuvvuri, Venkata
Source
Clinical and Translational Science. 15(8)
Subject
Pharmacology and Pharmaceutical Sciences
Biomedical and Clinical Sciences
Cardiovascular Medicine and Haematology
Biomedical Data Translator Consortium
Cardiorespiratory Medicine and Haematology
Oncology and Carcinogenesis
Other Medical and Health Sciences
General Clinical Medicine
Cardiovascular medicine and haematology
Pharmacology and pharmaceutical sciences
Language
Abstract
Clinical, biomedical, and translational science has reached an inflection point in the breadth and diversity of available data and the potential impact of such data to improve human health and well-being. However, the data are often siloed, disorganized, and not broadly accessible due to discipline-specific differences in terminology and representation. To address these challenges, the Biomedical Data Translator Consortium has developed and tested a pilot knowledge graph-based "Translator" system capable of integrating existing biomedical data sets and "translating" those data into insights intended to augment human reasoning and accelerate translational science. Having demonstrated feasibility of the Translator system, the Translator program has since moved into development, and the Translator Consortium has made significant progress in the research, design, and implementation of an operational system. Herein, we describe the current system's architecture, performance, and quality of results. We apply Translator to several real-world use cases developed in collaboration with subject-matter experts. Finally, we discuss the scientific and technical features of Translator and compare those features to other state-of-the-art, biomedical graph-based question-answering systems.