Suchi Saria
Suchi Saria | |
---|---|
Born | 1982 or 1983 (age 40–41)[2] |
Alma mater | Mount Holyoke College (BA) Stanford University (MSc, PhD) |
Known for | Personalised medicine Big data Machine learning |
Awards | Sloan Research Fellowship (2018) Innovators Under 35 (2017) |
Scientific career | |
Fields | Machine Learning Reasoning under Uncertainty Causal Inference Computational Healthcare[1] |
Institutions | Johns Hopkins University |
Thesis | The digital patient : machine learning techniques for analyzing electronic health record data (2011) |
Doctoral advisor | Daphne Koller |
Website | suchisaria |
Suchi Saria is a Professor of Machine Learning and Healthcare at Johns Hopkins University, where she uses big data to improve patient outcomes.[1][3][4][5] She is a World Economic Forum (WEF) Young Global Leader.
Early life and education
Saria is from Darjeeling.[6] She earned her Bachelor's degree at Mount Holyoke College.[7] She was awarded a full scholarship from Microsoft. In 2004 she joined Stanford University as a Rambus Corporation Fellow.[7] She earned her Master of Science and Doctor of Philosophy[8] degrees at Stanford University, supervised by Daphne Koller and advised by Anna Asher Penn and Sebastian Thrun. At Stanford University, Saria developed a model that could predict preemie outcomes with a 90% accuracy.[9] The model used data from monitors, birth weight and length of time spent in the womb to predict whether a preemie would develop an illness.[10] The output value PhyiScore could be used to reduce the $26 billion per year spent by US health care on preterm birth.[11] She worked in the startup Aster Data Systems.[12]
Career and research
Saria believes that big data can be used to personalise healthcare.[13][14] She is considered an expert in computational statistics and their applications to the real world.[7] She uses Bayesian and probabilistic modelling.[6] In 2014 Saria was funded by a $1.5 million Gordon and Betty Moore Foundation project that looked to make intensive care units safer.[15] The project used data collected at patients' bedsides along with noninvasive 3D sensors that monitor care in patient's hospital rooms.[16] The sensors collect information on steps that might have been missed by doctors; like washing hands.[16]
Saria uses big data to manage chronic diseases.[17] She is part of a National Science Foundation (NSF) award that looks at scleroderma. She uses machine learning to analyse medical records and identify similar patterns of disease progression.[17] The system works out which treatments have been effectively used for various symptoms to aid doctors in choosing treatment plans for specific patients.[17] She has developed another algorithm that can be used to predict and treat Septic shock.[18] The algorithm used 16,000 items of patient health records and generates a targeted real-time warning (TREWS) score.[19] She collaborated with David N. Hager to use the algorithm in clinics, and it was correct 86% of the time. Saria modified the algorithm to avoid missing high risk patients- for example, those who have suffered from septic shock previously and who have sought successful treatment.[20] She was described by XRDS magazine as being a Pioneer in transforming healthcare.[21] In 2016 Saria spoke at about using machine learning for medicine at TEDxBoston.[22] The talk has been viewed over 100,170 times.[23]
Awards and honours
Her awards and honors include:
- 2018 Sloan Research Fellowship[24][25][26]
- 2018 World Economic Forum Young Global Leader[26]
- 2017 MIT Technology Review 35 Innovators Under 35[2]
- 2017 Defense Advanced Projects Research Agency (DARPA) Young Faculty Fellowship[27]
- 2016 Brilliant 10 award by Popular Science[28]
- 2015 IEEE Intelligent Systems Young Star in Artificial Intelligence[29]
- 2015 Hopkins Discovery Award[7]
- 2014 National Science Foundation (NSF) Smart and Connected Health Research Grant[13]
- 2014 Google Research Award[7]
- 2014 Society of Critical Care Medicine Annual Scientific Award[7]
- 2013 Gordon and Betty Moore Foundation Research Award[7]
References
- ^ a b Suchi Saria publications indexed by Google Scholar
- ^ a b "These are the young people in tech to watch right now—meet this year's 35 Innovators Under 35". technologyreview.com. MIT Technology Review. Retrieved 2018-12-16.
- ^ Suchi Saria at DBLP Bibliography Server
- ^ Bates, David W.; Saria, Suchi; Ohno-Machado, Lucila; Shah, Anand; Escobar, Gabriel (2014). "Big Data In Health Care: Using Analytics To Identify And Manage High-Risk And High-Cost Patients". Health Affairs. 33 (7): 1123–1131. doi:10.1377/hlthaff.2014.0041. ISSN 0278-2715. PMID 25006137.
- ^ Saria, S.; Rajani, A. K.; Gould, J.; Koller, D.; Penn, A. A. (2010). "Integration of Early Physiological Responses Predicts Later Illness Severity in Preterm Infants". Science Translational Medicine. 2 (48): 48ra65. doi:10.1126/scitranslmed.3001304. ISSN 1946-6234. PMC 3564961. PMID 20826840.
- ^ a b "Suchi Saria – Machine Learning, Computational Health Informatics". suchisaria.jhu.edu. Retrieved 2018-12-16.
- ^ a b c d e f g "Suchi Saria, M.Sc., Ph.D". hopkinsmedicine.org. Johns Hopkins University. Retrieved 2018-12-16.
- ^ Saria, Suchi (2011). The digital patient : machine learning techniques for analyzing electronic health record data. stanford.edu (PhD thesis). Stanford University. OCLC 748681635.
- ^ Willyard, Cassandra (2010-09-08). "New Model Predicts Complications in Preemies". sciencemag.org. AAAS. Retrieved 2018-12-16.
- ^ "Electronic tool accurately assesses disease risk for preterm infants". healthcareitnews.com. Healthcare IT News. 2010-09-09. Retrieved 2018-12-16.
- ^ Klein, Dianne. "Researchers design more accurate method of determining premature infants' risk of illness". med.stanford.edu. Stanford University. Retrieved 2018-12-16.
- ^ "Plenary Speakers | SRI 2017 Annual Meeting". www.sri-online.org. Retrieved 2018-12-17.
- ^ a b Spring 2015, Jim Duffy / Published (2015-03-05). "Personalizing health care through big data". hub.jhu.edu. The Hub. Retrieved 2018-12-16.
{{cite web}}
: CS1 maint: numeric names: authors list (link) - ^ "A $3 Trillion Challenge to Computational Scientists: Transforming Healthcare Delivery - IEEE Journals & Magazine" (Document). doi:10.1109/MIS.2014.58.
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(help) - ^ "Johns Hopkins Winter 2014 Engineering Magazine". eng.jhu.edu. Retrieved 2018-12-16.
- ^ a b "Johns Hopkins Winter 2014 Engineering Magazine". eng.jhu.edu. Retrieved 2018-12-16.
- ^ a b c "Predictive Medicine - Science Nation". nsf.gov. National Science Foundation. Retrieved 2018-12-16.
- ^ "Predictive Model Identifies Patients Who Might Go Into Septic Shock". popsci.com. Popular Science. Retrieved 2018-12-16.
- ^ Saria, Suchi; Pronovost, Peter J.; Hager, David N.; Henry, Katharine E. (2015). "A targeted real-time early warning score (TREWScore) for septic shock". Science Translational Medicine. 7 (299): 299ra122. doi:10.1126/scitranslmed.aab3719. ISSN 1946-6242. PMID 26246167.
- ^ Young, Lauren J. (2015-08-07). "A Computer That Can Sniff Out Septic Shock". IEEE Spectrum: Technology, Engineering, and Science News. Retrieved 2018-12-16.
- ^ Razavian, Narges (2015). "Advancing the Frontier of Data-driven Healthcare". XRDS. 21 (4): 34–37. doi:10.1145/2788506. ISSN 1528-4972.
- ^ "Suchi Saria – TEDxBoston". tedxboston.org. Retrieved 2018-12-16.
- ^ TEDx Talks, "Better Medicine Through Machine Learning | Suchi Saria", youtube.com, retrieved 2018-12-16
- ^ "CS' Suchi Saria named a 2018 Sloan Research Fellow". cs.jhu.edu. Department of Computer Science. 2018-02-15. Retrieved 2018-12-16.
- ^ Feb 15, Hub staff report / Published; 2018 (2018-02-15). "Four Johns Hopkins scientists named Sloan Research Fellows". hub.jhu.edu. The Hub. Retrieved 2018-12-16.
{{cite web}}
:|last2=
has numeric name (help)CS1 maint: numeric names: authors list (link) - ^ a b "North America - Meet the 2018 Young Global Leaders". widgets.weforum.org. Retrieved 2018-12-16.
- ^ "Young Faculty Award". darpa.mil. Retrieved 2018-12-16.
- ^ "The Woman Who Predicts Septic Shock And Other Health Outcomes". popsci.com. Popular Science. Retrieved 2018-12-16.
- ^ "IEEE-AI-10-to-Watch.pdf" (PDF). Dropbox.com. Retrieved 2018-12-16.
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