New Technology Finds Patients Who Are Most Likely to Face Lethal Arrhythmias
Newswise, May 31, 2016 — When electrical waves in the heart
run amok in a condition called arrhythmia, sudden death can occur.
To save the
life of a patient at risk, doctors currently implant a small defibrillator to
sense the onset of arrhythmia and jolt the heart back to a normal rhythm.
But a thorny question remains: How should doctors decide which
patients truly need an invasive, costly electrical implant that is not without
health risks of its own?
To address this, an interdisciplinary Johns Hopkins University
team has developed a non-invasive 3-D virtual heart assessment tool to help
doctors determine whether a particular patient faces the highest risk of a
life-threatening arrhythmia and would benefit most from a defibrillator
implant.
In a proof-of-concept study published May 10 in the online journal
Nature Communications, the team reported that its new digital approach yielded
more accurate predictions than the imprecise blood pumping measurement now used
by most physicians.
“Our virtual heart test significantly outperformed several
existing clinical metrics in predicting future arrhythmic events,” saidNatalia
Trayanova, the university’s inaugural Murray B. Sachs Professor of
Biomedical Engineering. “This non-invasive and personalized virtual heart-risk
assessment could help prevent sudden cardiac deaths and allow patients who are
not at risk to avoid unnecessary defibrillator implantations.”
Trayanova, a pioneer in developing personalized imaging-based
computer models of the heart, supervised the research and was senior author of
the journal article. She holds faculty appointments within Johns Hopkins’
Whiting School of Engineering and its School of Medicine, and she is a core
faculty member of the university’s Institute for Computational Medicine.
For
this study, she joined forces with cardiologist and co-author Katherine C. Wu, associate professor in the Johns Hopkins
School of Medicine, whose research has focused on magnetic resonance imaging
approaches to improving cardiovascular risk prediction.
For this landmark study, Trayanova’s team formed its predictions by using the distinctive magnetic resonance imaging (MRI) records of patients who had survived a heart attack but were left with damaged cardiac tissue that predisposes the heart to deadly arrhythmias.
For this landmark study, Trayanova’s team formed its predictions by using the distinctive magnetic resonance imaging (MRI) records of patients who had survived a heart attack but were left with damaged cardiac tissue that predisposes the heart to deadly arrhythmias.
The research was a blinded study,
meaning that the team members did not know until afterward how closely their
forecasts matched what happened to the patients in real life. This study
involved data from 41 patients who had survived a heart attack and had an
ejection fraction—a measure of how much blood is being pumped out of the
heart—of less than 35 percent.
To protect against future arrhythmias, physicians typically recommend implantable defibrillators for all patients in this range, and all 41 patients in the study received the implants because of their ejection fraction scores. But research has concluded that this score is a flawed measure for predicting which patients face a high risk of sudden cardiac death.
To protect against future arrhythmias, physicians typically recommend implantable defibrillators for all patients in this range, and all 41 patients in the study received the implants because of their ejection fraction scores. But research has concluded that this score is a flawed measure for predicting which patients face a high risk of sudden cardiac death.
The Johns Hopkins team invented an alternative to these scores
by using pre-implant MRI scans of the recipients’ hearts to build
patient-specific digital replicas of the organs.
Using computer-modeling
techniques developed in Trayanova’s lab, the geometrical replica of each
patient’s heart was brought to life by incorporating representations of the
electrical processes in the cardiac cells and the communication among cells.
In
some cases, the virtual heart developed an arrhythmia, and in others it did
not. The result, a non-invasive way to gauge the risk of sudden cardiac death
due to arrhythmia, was dubbed VARP, short for virtual-heart arrhythmia risk
predictor.
The method allowed the researchers to factor in the geometry of the
patient’s heart, the way electrical waves move through it and the impact of
scar tissue left by the earlier heart attack.
Eventually, the VARP results were compared to the
defibrillator recipients’ post-implantation records to determine how well the
technology predicted which patients would experience the life-threatening
arrhythmias that were detected and halted by their implanted devices.
Patients
who tested positive for arrhythmia risk by VARP were four times more likely to
develop arrhythmia than those who tested negative. Furthermore, VARP predicted
arrhythmia occurrence in patients four-to-five times better than the ejection
fraction and other existing clinical risk predictors, both non-invasive and
invasive.
“We demonstrated that VARP is better than any other arrhythmia
prediction method that is out there,” Trayanova said. “By accurately predicting
which patients are at risk of sudden cardiac death, the VARP approach will
provide the doctors with a tool to identify those patients who truly need the
costly implantable device, and those for whom the device would not provide any
life-saving benefits.”
Wu agreed that these encouraging early results indicate that
the more nuanced VARP technique could be a useful alternative to the
one-size-fits-all ejection fraction score.
“This is a ground-breaking proof-of-concept study for several reasons,” Wu said, “As cardiologists, we obtain copious amounts of data about patients, particularly high-tech imaging data, but ultimately we use little of that information for individualized care.
“This is a ground-breaking proof-of-concept study for several reasons,” Wu said, “As cardiologists, we obtain copious amounts of data about patients, particularly high-tech imaging data, but ultimately we use little of that information for individualized care.
"With the technique used in this study, we were able to
create a personalized, highly detailed virtual 3-D heart, based on the
patient's specific anatomy. Then, we were able to test the heart virtually to
see how irritable it is under certain situations.
"We could do all this without
requiring the patient to undergo an invasive procedure. This represents a
safer, more comprehensive and individualized approach to sudden cardiac death
risk assessment.”
Wu pointed out that an implantable defibrillator also has a
few risks of its own and that avoiding implantation of this device when it is
not truly needed eliminates these risks.
Implantable defibrillators, she said,
require invasive access to the heart, frequent device checks and intermittent
battery changes. Complications, she added, can include infection, device
malfunction and, in rare instances, heart or blood vessel damage.
In addition to eliminating unnecessary device implantations,
Trayanova noted that this new risk prediction methodology could also be applied
to patients who had prior heart damage, but whose ejection fraction score did
not target them for therapy under current clinical recommendations. Thus,
Trayanova said, VARP has the potential to save the lives of a much larger
number of at-risk patients.
With the proof-of-concept study completed, the researchers
next hope to conduct further tests involving larger groups of heart patients.
The VARP technique is covered by patent protection obtained through the Johns Hopkins Technology
Ventures office.
The first author of the Nature Communications article was
Hermenegild J. Arevalo, who conducted the VARP simulations for the cohort of 41
patients. Arevalo earned his doctorate in Trayanova’s lab, then served as a
postdoctoral fellow, supervising the undergraduates who contributed to the
virtual heart research.
For his work on this project Arevalo won the 2016 Young
Investigator Award at the Heart Rhythm Scientific Sessions.
The co-lead author
was Fijoy Vadakkumpadan, who also worked as a postdoctoral fellow in
Trayanova’s lab. Along with Trayanova and Wu, the co-authors were Eliseo
Guallar, a professor of epidemiology in Johns Hopkins’ Bloomberg School of
Public Health; and Alexander Jebb and Peter Malamas, both Whiting School of
Engineering undergraduates majoring in biomedical engineering.
Funding for the research was provided by Trayanova’s NIH
Pioneer Award DP1-HL123271; American Heart Association grant 13SDG145100061;
W.W. Smith Charitable Trust Heart Research grant H1202; and Wu’s NIH Grant
HL103812.
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