Raman spectroscopy and artificial intelligence to predict the Bayesian probability of breast cancer.

Journal: Scientific reports
Published Date:

Abstract

This study addresses the core issue facing a surgical team during breast cancer surgery: quantitative prediction of tumor likelihood including estimates of prediction error. We have previously reported that a molecular probe, Laser Raman spectroscopy (LRS), can distinguish healthy and tumor tissue. We now report that combining LRS with two machine learning algorithms, unsupervised k-means and stochastic nonlinear neural networks (NN), provides rapid, quantitative, probabilistic tumor assessment with real-time error analysis. NNs were first trained on Raman spectra using human expert histopathology diagnostics as gold standard (74 spectra, 5 patients). K-means predictions using spectral data when compared to histopathology produced clustering models with 93.2-94.6% accuracy, 89.8-91.8% sensitivity, and 100% specificity. NNs trained on k-means predictions generated probabilities of correctness for the autonomous classification. Finally, the autonomous system characterized an extended dataset (203 spectra, 8 patients). Our results show that an increase in DNA|RNA signal intensity in the fingerprint region (600-1800 cm) and global loss of high wavenumber signal (2800-3200 cm) are particularly sensitive LRS warning signs of tumor. The stochastic nature of NNs made it possible to rapidly generate multiple models of target tissue classification and calculate the inherent error in the probabilistic estimates for each target.

Authors

  • Ragini Kothari
    Department of Surgery, City of Hope, 1500 E. Duarte Rd., Duarte, CA 91010, USA.
  • Veronica Jones
    Department of Surgery, City of Hope National Medical Center, 1500 E. Duarte Rd, Furth 1116, Duarte, CA, 91010, USA.
  • Dominique Mena
    Department of Engineering, Harvey Mudd College, 301 Platt Blvd, Claremont, CA, 91711, USA.
  • Viviana Bermúdez Reyes
    Department of Engineering, Harvey Mudd College, 301 Platt Blvd, Claremont, CA, 91711, USA.
  • Youkang Shon
    Department of Engineering, Harvey Mudd College, 301 Platt Blvd, Claremont, CA, 91711, USA.
  • Jennifer P Smith
    Department of Physics, Harvey Mudd College, 301 Platt Blvd, Claremont, CA, 91711, USA.
  • Daniel Schmolze
    Department of Pathology, City of Hope, 1500 E. Duarte Rd, Duarte, CA, 91010, USA.
  • Philip D Cha
    Department of Engineering, Harvey Mudd College, 301 Platt Blvd, Claremont, CA, 91711, USA.
  • Lily Lai
    Department of Surgery, City of Hope National Medical Center, 1500 E. Duarte Rd, Furth 1116, Duarte, CA, 91010, USA.
  • Yuman Fong
    Department of Surgery, Memorial Sloan-Kettering Cancer Center, New York, NY.
  • Michael C Storrie-Lombardi
    Kinohi Institute, Inc., Santa Barbara, CA 93109, USA.