4.7 Article

Spatiotemporal estimations of temperature rise during electroporation treatments using a deep neural network

Journal

COMPUTERS IN BIOLOGY AND MEDICINE
Volume 161, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2023.107019

Keywords

Electroporation; Thermal heating; Artificial intelligence; Pulsed electric field; Tissue ablations

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The nonthermal mechanism of irreversible electroporation is important for treating tumors and cardiac tissue in anatomically sensitive areas. A temperature prediction artificial intelligence (AI) model that uses estimated tissue properties, known geometric properties, and easily measurable treatment parameters has been developed. This model accurately predicts temperature rise in various conditions, including realistic simulations and ex vivo perfused porcine livers, with minimal error.
The nonthermal mechanism for irreversible electroporation has been paramount for treating tumors and cardiac tissue in anatomically sensitive areas, where there is concern about damage to nearby bowels, ducts, blood vessels, or nerves. However, Joule heating still occurs as a secondary effect of applying current through a resistive tissue and must be minimized to maintain the benefits of electroporation at high voltages. Numerous thermal mitigation protocols have been proposed to minimize temperature rise, but intraoperative temperature monitoring is still needed. We show that an accurate and robust temperature prediction AI model can be developed using estimated tissue properties (bulk and dynamic conductivity), known geometric properties (probe spacing), and easily measurable treatment parameters (applied voltage, current, and pulse number). We develop the 2-layer neural network on realistic 2D finite element model simulations with conditions encom-passing most electroporation applications. Calculating feature contributions, we found that temperature pre-diction is mostly dependent on current and pulse number and show that the model remains accurate when incorrect tissue properties are intentionally used as input parameters. Lastly, we show that the model can predict temperature rise within ex vivo perfused porcine livers, with error <0.5 degrees C. This model, using easily acquired parameters, is shown to predict temperature rise in over 1000 unique test conditions with <1 degrees C error and no observable outliers. We believe the use of simple, readily available input parameters would allow this model to be incorporated in many already available electroporation systems for real-time temperature estimations.

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