用于生物组织鉴定和分化的低温大气等离子体传感器

IF 3.5 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Kimberly J. Chan;Augusto Stancampiano;Kelci N. Skinner;Eric Robert;Ali Mesbah
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引用次数: 0

摘要

低温大气等离子体(CAPs)已成为血浆医学的核心组成部分,这是一个相对较新的研究领域,CAPs在各种生物医学用途和医学治疗中显示出前景。cap由存在于接近室温和大气压下的部分电离气体组成。CAPs通过化学、热和电相互作用影响生物材料,这些相互作用可以通过普通等离子体特性测量观察到。对于待表征界面已经暴露的情况(例如,早期皮肤癌检测),我们建议使用cap以无创方式进行实时组织识别。我们利用CAP与生物界面相互作用的灵敏度,通过使用实时化学(通过光学发射光谱)和电气(通过沿电路的电压探头)测量来识别和区分生物组织。这些信息丰富的测量嵌入了等离子体化学及其与生物组织相互作用的物理知识。因此,我们结合常见的物理知识,使用机器学习提取和分析这些测量值。我们的概念验证研究表明,在区分离体鸡模型的四种组织类型(即皮肤、肌肉、骨骼和脂肪)时,生物组织的区分准确率高达99%。提出的CAP组织识别和分化方法可以有效地增加医疗诊断工具包,包括癌症检测,血管研究和实时手术分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cold Atmospheric Plasma Sensor for Identification and Differentiation of Biological Tissues
Cold atmospheric plasmas (CAPs) have emerged as the central component to plasma medicine, a relatively new research field in which CAPs have shown promise for a variety of biomedical uses and medical therapies. CAPs comprise of a partially ionized gas that exists at near room temperature and atmospheric pressure. CAPs affect biological materials via chemical, thermal, and electrical interactions that are observable using common plasma characterization measurements. For cases in which the to-be-characterized interface is already exposed (e.g., early skin cancer detection), we propose CAPs can be used for real-time tissue identification in a noninvasive manner. We leverage the sensitivity of CAP interactions with biological interfaces to identify and differentiate biological tissues by using real-time chemical (via optical emission spectra) and electrical (via voltage probes along the circuit) measurements. These information-rich measurements have embedded physics knowledge about the plasma chemistry and its interactions with biological tissues. Thus, we incorporate common physics knowledge to extract and analyze such measurements using machine learning. Our proof-of-concept studies demonstrate that biological tissues can be differentiated with up to 99% test accuracy when differentiating four tissue types (i.e., skin, muscle, bone, and fat) of an ex vivo chicken model. The proposed CAP tissue identification and differentiation approach can effectively augment the medical diagnostic toolkit, including in cancer detection, vascular studies, and real-time surgical analysis.
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来源期刊
IEEE Transactions on Radiation and Plasma Medical Sciences
IEEE Transactions on Radiation and Plasma Medical Sciences RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
8.00
自引率
18.20%
发文量
109
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