Sema4 and Mount Sinai use Machine Learning to Improve Postpartum Hemorrhage Risk Prediction
November 04 2021 - 8:00AM
Sema4 (NASDAQ: SMFR), an AI-driven genomic and clinical data
intelligence platform company, recently published two studies
demonstrating the utility of machine learning to predict clinical
outcomes for postpartum hemorrhage (PPH). The studies, which will
appear in a special “Informatics for Sex- and Gender-Related
Health” print issue of the Journal of the American Medical
Informatics Association (JAMIA), were conducted in collaboration
with clinicians from the Mount Sinai Health System.
Sema4 chose to focus its advanced machine learning methods on
PPH as the condition is the leading cause of maternal mortality
globally. PPH accounts for around a third of maternal deaths and
often occurs in patients with no known risk factors for hemorrhage.
In addition, limitations in diagnostic guidelines and risk
assessment tools can make it difficult for healthcare providers to
adequately identify and treat PPH, particularly in patients without
evident symptoms.
“These two new papers are among the first to use large-scale,
comprehensive real-world data to predict clinical outcomes,” said
Eric Schadt, PhD, Founder and Chief Executive Officer of Sema4 and
joint corresponding author on the papers. “By implementing our
predictive model into the clinical standard of care, healthcare
providers may be able to improve PPH risk assessment and medical
management for their pregnant patients resulting in better health
outcomes.”
The first study leveraged de-identified longitudinal electronic
medical record (EMR) data on over 70,000 pregnancy deliveries at
five Mount Sinai Health System hospitals to develop and validate a
comprehensive digital phenotyping algorithm for PPH. The novel
algorithm incorporates not only cumulative blood loss but also
other critical diagnostic and treatment-related features indicative
of PPH.
“PPH is a devastating condition which occurs with little advance
warning. Current guidelines primarily rely on cumulative blood loss
as the main diagnostic marker for PPH,” said Li Li, MD, SVP of
Clinical Informatics at Sema4 and joint corresponding author. “We
identified additional clinical features from EMR data, enabling us
to identify PPH with 89% accuracy, whereas the standard blood
loss-based definition was only 67% accurate. Thus, we anticipate
that our digital phenotyping algorithm will be of significant use
for tracking outcomes and clinical research to develop better
preventative interventions for PPH.”
The same patient cohort was used in the second study to build,
train, and validate a predictive model for PPH risk using advanced
machine learning methods. The model uses 24 predictive markers,
including five new potential PPH risk factors. These risk factors
are readily obtained from routine lab tests, including complete
blood count panels and vital signs, but are not currently utilized
in standard risk assessment tools. The research also identified
inflection points for laboratory and vital sign values where PPH
risk rose substantially, which could serve as a guideline for
monitoring intrapartum risk. In comparison tests, Sema4’s novel
tool outperformed three existing clinical risk-assessment tools and
models.
“We look forward to continuing to advance this collaboration,
combining the research and clinical expertise from Mount Sinai’s
obstetrics, gynecology, and reproductive science team with Sema4’s
machine learning methods to advance solutions for postpartum
hemorrhage,” said Erik Lium, PhD, President of Mount Sinai
Innovation Partners and Executive Vice President and Chief
Commercial Innovation Officer for the Mount Sinai Health
System.
“In our studies, we established a physician-validated,
comprehensive digital phenotyping tool for PPH using EMR data from
a large US health system. We then used this validated phenotype to
assess longitudinal antepartum and intrapartum data to build a
robust predictive model for PPH risk after hospital admission,”
said Dr. Li. “Our model identified clinical feature thresholds that
can guide intrapartum monitoring with near-immediate clinical
utility. Compared to current clinical standards of abnormal vital
signs and laboratory parameters in the antepartum and intrapartum
periods, we detected values for these 24 markers that could provide
early warning signals to healthcare providers to monitor patients
at risk. Following further evaluation, our predictive tool may
enable reproductive healthcare providers to predict and treat
potential high-risk symptoms before they occur, allocate resources
appropriately, and ultimately reduce PPH morbidity and
mortality.”
Both studies leveraged insights from Centrellis®, Sema4’s health
intelligence platform that powers Sema4’s ongoing research to
better understand and improve reproductive health. Key areas of
research include predictive modeling to determine the optimal
timing for a pregnant patient to receive noninvasive prenatal
testing to achieve the most accurate results and generating models
to better predict the potential risk for preeclampsia, another
leading cause of maternal mortality.
The Icahn School of Medicine at Mount Sinai (Icahn Mount Sinai)
holds equity in Sema4. Dr. Schadt is the Chief Executive
Officer for Sema4 and holds equity in the company. In
addition, Dr. Schadt is a part-time faculty member at Icahn Mount
Sinai.
About Sema4Sema4 is a patient-centered health
intelligence company dedicated to advancing healthcare through
data-driven insights. Sema4 is transforming healthcare by applying
AI and machine learning to multidimensional, longitudinal clinical
and genomic data to build dynamic models of human health and
defining optimal, individualized health trajectories. Centrellis®,
our innovative health intelligence platform, is enabling us to
generate a more complete understanding of disease and wellness and
to provide science-driven solutions to the most pressing medical
needs. Sema4 believes that patients should be treated as partners,
and that data should be shared for the benefit of all. For more
information, please visit sema4.com and connect with Sema4
on Twitter, LinkedIn, Facebook and YouTube.
Media contact:Radley MossRadley.moss@sema4.com
Sema4 (NASDAQ:SMFRW)
Historical Stock Chart
From Dec 2024 to Jan 2025
Sema4 (NASDAQ:SMFRW)
Historical Stock Chart
From Jan 2024 to Jan 2025