Comparative analysis of traditional machine learning and automated machine learning: advancing inverted papilloma versus associated squamous cell carcinoma diagnosis

Author:

Hosseinzadeh Farideh1,Mohammadi S. Saeed2,Palmer James N.3,Kohanski Michael A.3,Adappa Nithin D.3,Chang Michael T.1ORCID,Hwang Peter H.1ORCID,Nayak Jayakar V.1ORCID,Patel Zara M.1ORCID

Affiliation:

1. Department of Otolaryngology‐Head & Neck Surgery Stanford University School of Medicine Stanford California USA

2. Byers Eye Institute Department of Ophthalmology Stanford University Palo Alto California USA

3. University of Pennsylvania Perelman School of Medicine Philadelphia Pennsylvania USA

Abstract

Key Points Inverted papilloma conversion to squamous cell carcinoma is not always easy to predict. AutoML requires much less technical knowledge and skill to use than traditional ML. AutoML surpassed the traditional ML algorithm in differentiating IP from IP‐SCC.

Publisher

Wiley

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