Literature DB >> 32323209

Perioperative margin detection in basal cell carcinoma using a deep learning framework: a feasibility study.

Alice M L Santilli1, Amoon Jamzad2, Natasja N Y Janssen2, Martin Kaufmann3, Laura Connolly2, Kaitlin Vanderbeck4, Ami Wang4, Doug McKay5, John F Rudan5, Gabor Fichtinger2, Parvin Mousavi2.   

Abstract

PURPOSE: Basal cell carcinoma (BCC) is the most commonly diagnosed cancer and the number of diagnosis is growing worldwide due to increased exposure to solar radiation and the aging population. Reduction of positive margin rates when removing BCC leads to fewer revision surgeries and consequently lower health care costs, improved cosmetic outcomes and better patient care. In this study, we propose the first use of a perioperative mass spectrometry technology (iKnife) along with a deep learning framework for detection of BCC signatures from tissue burns.
METHODS: Resected surgical specimen were collected and inspected by a pathologist. With their guidance, data were collected by burning regions of the specimen labeled as BCC or normal, with the iKnife. Data included 190 scans of which 127 were normal and 63 were BCC. A data augmentation approach was proposed by modifying the location and intensity of the peaks of the original spectra, through noise addition in the time and frequency domains. A symmetric autoencoder was built by simultaneously optimizing the spectral reconstruction error and the classification accuracy. Using t-SNE, the latent space was visualized.
RESULTS: The autoencoder achieved an accuracy (standard deviation) of 96.62 (1.35%) when classifying BCC and normal scans, a statistically significant improvement over the baseline state-of-the-art approach used in the literature. The t-SNE plot of the latent space distinctly showed the separability between BCC and normal data, not visible with the original data. Augmented data resulted in significant improvements to the classification accuracy of the baseline model.
CONCLUSION: We demonstrate the utility of a deep learning framework applied to mass spectrometry data for surgical margin detection. We apply the proposed framework to an application with light surgical overhead and high incidence, the removal of BCC. The learnt models can accurately separate BCC from normal tissue.

Entities:  

Keywords:  Autoencoder; Basal cell carcinoma; Intraoperative tissue characterization; Non-linear analysis; Rapid evaporative ionization mass spectrometry; Surgical margin detection

Mesh:

Year:  2020        PMID: 32323209     DOI: 10.1007/s11548-020-02152-9

Source DB:  PubMed          Journal:  Int J Comput Assist Radiol Surg        ISSN: 1861-6410            Impact factor:   2.924


  3 in total

Review 1.  Data Science Trends Relevant to Nursing Practice: A Rapid Review of the 2020 Literature.

Authors:  Brian J Douthit; Rachel L Walden; Kenrick Cato; Cynthia P Coviak; Christopher Cruz; Fabio D'Agostino; Thompson Forbes; Grace Gao; Theresa A Kapetanovic; Mikyoung A Lee; Lisiane Pruinelli; Mary A Schultz; Ann Wieben; Alvin D Jeffery
Journal:  Appl Clin Inform       Date:  2022-02-09       Impact factor: 2.342

2.  Deep learning with transfer learning in pathology. Case study: classification of basal cell carcinoma.

Authors:  Raluca Maria Bungărdean; Mircea Sebastian Şerbănescu; Costin Teodor Streba; Maria Crişan
Journal:  Rom J Morphol Embryol       Date:  2021 Oct-Dec       Impact factor: 0.833

3.  Toward intraoperative tissue classification: exploiting signal feedback from an ultrasonic aspirator for brain tissue differentiation.

Authors:  Niclas Bockelmann; Daniel Schetelig; Denise Kesslau; Steffen Buschschlüter; Floris Ernst; Matteo Mario Bonsanto
Journal:  Int J Comput Assist Radiol Surg       Date:  2022-08-04       Impact factor: 3.421

  3 in total

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