Software that can recognize patterns in data is commonly used by
scientists and economics. Now, researchers in the US have applied
similar algorithms to help them more accurately diagnose breast cancer. The researchers outline details in the International Journal of Medical Engineering and Informatics.
Duo Zhou a biostatistician at pharmaceutical company Pfizer in New York
and colleagues Dinesh Mital and Shankar Srinivasan of the University of
Medicine and Dentistry of New Jersey, point out that data pattern
recognition is widely used in machine-learning applications in science.
Computer algorithms trained on historical data can be used to analyze
current information and detect patterns and then predict possible future
patterns. However, this powerful knowledge discovery technology is
little used in medicine.
The team suggested that just such an automated statistical analysis
methodology might readily be adapted to a clinical setting. They have
done just that in using an algorithmic approach to analyzing data from
breast cancer screening to more precisely recognize the presence of
malignant tumors in breast tissue as opposed to benign growths or calcium
deposits. This could help improve outcomes for patients with malignancy
but also reduce the number of false positives that otherwise lead
patients to unnecessary therapeutic, chemotherapy or radiotherapy, and surgical interventions.
The machine learning approach takes into account nine characteristics of
a minimally invasive fine needle biopsy, including clump thickness,
uniformity of cell size, adhesions, epithelial cell size, bare cell
nuclei and other factors. Trained on definitive data annotated as
malignant or benign, the system was able to correlate the many disparate
visual factors present in the data with the outcome. The statistical
model thus developed could then be used to test new tissue samples for
malignancy.
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