Spectral fingerprinting of ovarian cancer in serum samples

Ovarian cancer can be predicted with high sensitivity and specificity via a fingerprint obtained, via machine learning, from near-infrared fluorescence emissions of an array of carbon nanotube sensors in serum samples.
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Biotechnology
Life Sciences > Biological Sciences > Biotechnology

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