Enhanced Immunohistochemistry Interpretation with a Machine Learning-Based Expert System

Author:

Neagu Anca Iulia12ORCID,Poalelungi Diana Gina13,Fulga Ana13,Neagu Marius13ORCID,Fulga Iuliu13ORCID,Nechita Aurel12

Affiliation:

1. Faculty of Medicine and Pharmacy, Dunarea de Jos University of Galati, 35 AI Cuza St., 800010 Galati, Romania

2. Saint John Clinical Emergency Hospital for Children, 800487 Galati, Romania

3. Saint Apostle Andrew Emergency County Clinical Hospital, 177 Brailei St., 800578 Galati, Romania

Abstract

Background: In recent decades, machine-learning (ML) technologies have advanced the management of high-dimensional and complex cancer data by developing reliable and user-friendly automated diagnostic tools for clinical applications. Immunohistochemistry (IHC) is an essential staining method that enables the identification of cellular origins by analyzing the expression of specific antigens within tissue samples. The aim of this study was to identify a model that could predict histopathological diagnoses based on specific immunohistochemical markers. Methods: The XGBoost learning model was applied, where the input variable (target variable) was the histopathological diagnosis and the predictors (independent variables influencing the target variable) were the immunohistochemical markers. Results: Our study demonstrated a precision rate of 85.97% within the dataset, indicating a high level of performance and suggesting that the model is generally reliable in producing accurate predictions. Conclusions: This study demonstrated the feasibility and clinical efficacy of utilizing the probabilistic decision tree algorithm to differentiate tumor diagnoses according to immunohistochemistry profiles.

Funder

“Dunărea de Jos” University of Galati

Publisher

MDPI AG

Reference46 articles.

1. Immunohistochemistry as an Important Tool in Biomarkers Detection and Clinical Practice;Trufelli;Biomark. Insights,2010

2. Uso prático da imuno-histoquímica em patologia cirúrgica;Werner;J. Bras. Patol. Med. Lab.,2005

3. Immunohistologic Evaluation of Metastatic Carcinomas of Unknown Origin: An Algorithmic Approach;DeYoung;Semin. Diagn. Pathol.,2000

4. Dabbs, D. (2010). Diagnostic Immunohistochemistry, Elsevier Ltd.. [3rd ed.].

5. Practical Applications in Immunohistochemistry: Carcinomas of Unknown Primary Site;Kandalaft;Arch. Pathol. Lab. Med.,2016

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