Revealing low-temperature plasma efficacy through a dose-rate assessment by DNA damage detection combined with machine learning models

Author:

Sebastian Amal,Spulber Diana,Lisouskaya Aliaksandra,Ptasinska Sylwia

Abstract

AbstractLow-temperature plasmas have quickly emerged as alternative and unconventional types of radiation that offer great promise for various clinical modalities. As with other types of radiation, the therapeutic efficacy and safety of low-temperature plasmas are ubiquitous concerns, and assessing their dose rates is crucial in clinical settings. Unfortunately, assessing the dose rates by standard dosimetric techniques has been challenging. To overcome this difficulty, we proposed a dose-rate assessment framework that combined the predictive modeling of plasma-induced damage in DNA by machine learning with existing radiation dose-DNA damage correlations. Our results indicated that low-temperature plasmas have a remarkably high dose rate that can be tuned by various process parameters. This attribute is beneficial for inducing radiobiological effects in a more controllable manner.

Funder

U.S. Department of Energy

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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