Machine learning in laryngeal cancer: A pilot study to predict oncological outcomes and the role of adverse features

Author:

Petruzzi Gerardo1ORCID,Coden Elisa2,Iocca Oreste3ORCID,di Maio Pasquale4,Pichi Barbara1ORCID,Campo Flaminia1,De Virgilio Armando56ORCID,Francesco Mazzola1,Vidiri Antonello7,Pellini Raul1ORCID

Affiliation:

1. Department of Otolaryngology and Head and Neck Surgery IRCCS Regina Elena National Cancer Institute Rome Italy

2. Division of Otorhinolaryngology – Head and Neck Surgery, ASST Sette Laghi, Ospedale di Circolo e Fondazione Macchi University of Insubria Varese Italy

3. Division of Maxillofacial Surgery, Città della Salute e della Scienza University of Torino Torino Italy

4. Department of otolaryngology‐Head and Neck Surgery Giuseppe Fornaroli Hospital, ASST Ovest Milanese Magenta Italy

5. Department of Biomedical Sciences Humanitas University Milan Italy

6. Department of Otolaryngology and Head and Neck Surgery IRCCS Humanitas Research Hospital Milan Italy

7. Department of Radiology and Diagnostic Imaging IRCCS Regina Elena National Cancer Institute Rome Italy

Abstract

AbstractBackgroundLaryngeal carcinoma (LC) remains a significant economic and emotional problem to the healthcare system and severe social morbidity. New tools as Machine Learning could allow clinicians to develop accurate and reproducible treatments.MethodsThis study aims to evaluate the performance of a ML‐algorithm in predicting 1‐ and 3‐year overall survival (OS) in a cohort of patients surgical treated for LC. Moreover, the impact of different adverse features on prognosis will be investigated. Data was collected on oncological FU of 132 patients. A retrospective review was performed to create a dataset of 23 variables for each patient.ResultsThe decision‐tree algorithm is highly effective in predicting the prognosis, with a 95% accuracy in predicting the 1‐year survival and 82.5% in 3‐year survival; The measured AUC area is 0.886 at 1‐year Test and 0.871 at 3‐years Test. The measured AUC area is 0.917 at 1‐year Training set and 0.964 at 3‐years Training set. Factors that affected 1yOS are: LNR, type of surgery, and subsite. The most significant variables at 3yOS are: number of metastasis, perineural invasion and Grading.ConclusionsThe integration of ML in medical practices could revolutionize our approach on cancer pathology.

Publisher

Wiley

Subject

Otorhinolaryngology

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