Machine Learning on Systematically Curated Data Reveals Key Determinants of Magnetic Hyperthermia Performance
Edgar Régulo Vega‐Carrasco, Shaquib Rahman Ansari, Jiaxi Zhao, Yael del Carmen Suárez‐López, Per Larsson, Alexandra Teleki

TL;DR
This paper uses machine learning to accurately predict the performance of magnetic nanoparticles in hyperthermia treatments, identifying key factors that influence their effectiveness.
Contribution
A novel machine learning framework using a curated dataset of SPION properties to predict SAR with high accuracy and identify key performance determinants.
Findings
CatBoost algorithm achieved R² = 0.98 in predicting SAR of SPIONs.
Field amplitude and frequency were the most influential factors for SAR prediction.
Model predictions were reliable with a prediction interval of ±62 W g⁻¹.
Abstract
Accurate prediction of the specific absorption rate (SAR) of superparamagnetic iron oxide nanoparticles (SPIONs) is critical for optimizing their performance in magnetic hyperthermia applications. This study presents the development of a predictive model for SAR using advanced machine learning techniques and a systematically curated dataset comprising 1850 entries from 84 published studies, capturing 30 predictive features related to SPION properties and experimental parameters. Twelve machine learning algorithms were evaluated and optimized using Bayesian hyperparameter tuning. The CatBoost algorithm emerged as the top‐performing model (R 2 = 0.98) with the lowest prediction errors. Shapley additive explanation analysis revealed alternating magnetic field amplitude and frequency as the most influential factors determining SAR, followed by SPION concentration and core surface area.…
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Taxonomy
TopicsNanoparticle-Based Drug Delivery · Characterization and Applications of Magnetic Nanoparticles · Magnetic Properties and Synthesis of Ferrites
