论文标题
材料分解基于光子计数的可行性CT温度计
Feasibility of Material Decomposition-based Photon-counting CT Thermometry
论文作者
论文摘要
在过去的几十年中,热消融程序(例如高强度集中超声(HIFU))已开发出焦点区域中的癌组织。热消融有可能非侵入性消除肿瘤,并以高疗效和更好的患者预后治疗其他医疗状况。但是,必须将治疗与实时温度监测结合,以便在围绕健康组织的同时向目标提供足够的热剂量。为此,已经探索了计算机断层扫描(CT)以快速提供精细的空间分辨率。但是,当前的CT温度计对异质组织特性,成像噪声和伪影敏感。为了应对这一挑战,本文利用了新兴的光子计数CT技术,基于材料分解进行断层造影热法,并在逼真的数值模拟中获得了出色的结果。具体而言,设计了三种算法,以使材料组成和光谱CT重建的热膨胀并在比较研究中进行比较。最好的算法(称为一步算法)独特地发现材料分解和相关的温度同时在封闭形式的溶液中同时发现,这对组织组成的变化是可靠的,并在现实的CT图像噪声水平下以刻度的温度预测产生温度预测。
Over the past decades, thermal ablation procedures such as high intensity focused ultrasound (HIFU) have been developed vaporize cancerous tissues in a focal area. Thermal ablation has the potential to non-invasively eliminate tumors and treat other medical conditions with high efficacy and better patient outcomes. However, it is necessary for treatment to be coupled with real time temperature monitoring in order to deliver sufficient thermal dosage to the target while sparing surrounding, healthy tissues. To this end, computed tomography (CT) has been explored to offer fine spatial resolution at a rapid speed. However, current CT thermometry techniques are sensitive to heterogeneous tissue properties, imaging noise, and artifacts. To address this challenge, this paper utilizes the emerging photon-counting CT technology, performs tomographic thermometry based on material decomposition, and obtains excellent results in realistic numerical simulation. Specifically, three algorithms were designed to decouple material composition and thermal expansion from spectral CT reconstruction and compared in a comparative study. The best algorithm, referred to as the one-step algorithm, uniquely finds both material decomposition and the associated temperature at the same time in a closed form solution, which is robust to changes in tissue composition and generates temperature predictions with centigrade accuracy under realistic CT image noise levels.