Cell-based Point-of-Care Oncology Tool (POCOT) For Precision Medicine
John McDevitt, Chair, Department of Biomaterials, New York University College of Dentistry Bioengineering Institute
The U.S. health care spending in 2016 reached $3.3 trillion or $10,348
per person. Health spending now accounts for 17.9% the US Gross Domestic
Product. Chronic diseases like cardiac and cancer account for the
majority of the costs in this area. Further, contributing to the $2.8B
total costs for each new pharmaceutical is the cumbersome decade long
approval process. These somber statistics seem to be offset by the
promise of cutting edge biomarker developments with 157,000 biomarker
papers published in last decade, yet only ~1 biomarker per year gets
approved by the FDA. Likewise, the true potential for precision medicine
is tampered by an infrastructure and incentive structure that slows the
arrival of the benefits of precision medicine. To overcome these
limitations, transformative new tools are desperately needed to enable a
new era of medicine through research, technology, and policies that
empower patients, researchers, and providers to work together toward
development of individualized treatment. This talk features the
development, optimization and validation of the first cell-based
point-of-care oncology tool (POCOT) for precision medicine. Using
single-cell data collected non-invasively from cytology samples of
prospectively recruited patients with gold-standard-confirmed diagnoses,
a series of predictive models were developed and validated resulting in
a “continuous numerical risk score”. Model development consisted of:
(1) training binary classification models for each diagnostic class
pair, (2) pairwise coupling to obtain diagnostic class probabilities,
and (3) a weighted aggregation to obtain a final risk score on a
continuous scale. Diagnostic accuracy based on optimized cutpoints for
the validation dataset ranged from 76% for Benign lesions, to 82.4% for
Dysplastic, 89.6% for Malignant, and 97.6% for Normal controls. The
weighted aggregation of pairwise probabilities into a continuous
variable was associated with a minor decrease of 6.4% for overall
accuracy and demonstrated a strong positive relationship with diagnostic
severity (Pearson’s coefficient = 0.805 for validation dataset).
Frequencies of 5 cellular phenotypes recorded for 3 different ranges of
the numeric index score agreed with common trends observed in
conventional cytopathology. Finally, a simulation demonstrated that the
numeric index can respond to changes in as few as 1% of the cells within
a cytology sample, which is a necessary requirement for future
evaluations of its utility for lesion monitoring. The first cell-based
point-of-care oncology tool for precision medicine is demonstared in the
context of a continuous numeric index for potentially malignant oral
disorders. These efforts result in a sensitive, accurate, and
non-invasive method for enabling monitoring of these lesions. Continuous
quantitative severity indices devoid of human subjectivity and
categorization bias could have significant implications in a variety of
medical decision making situations where microscopic evaluations and
grading of biopsy samples by pathologists currently determine
diagnostic, prognostic and treatment decisions. As such, this numeric
index has the potential to monitor disease progression, recurrence, and
the need for therapeutic intervention.
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