Grafil Elliot, De Jean Paul, Capaldi Dante, Skinner Lawrie B, Xing Lei, Yu Amy S
Luca Medical Systems, 83 W 8800 S, Spanish Fork, Utah, 84660, UNITED STATES.
Department of Radiation Oncology, University of California San Francisco, 505 Parnassus Ave, San Francisco, California, 94143, UNITED STATES.
Biomed Phys Eng Express. 2024 Dec 17. doi: 10.1088/2057-1976/ada037.
Single-isocenter multitarget (SIMT) stereotactic-radiosurgery (SRS) has recently emerged as a powerful treatment regimen for intracranial tumors. With high specificity, SIMT SRS allows for rapid, high-dose delivery while maintaining integrity of adjacent healthy tissues and minimizing neurocognitive damage to patients. Highly robust and accurate quality assurance (QA) tests are critical to minimize off-targets and damage to surrounding healthy tissues. We have developed a novel QA phantom, named OneIso, to accurately and precisely measure off-axis accuracy, via off-axis Winston-Lutz (OAWL), to assist SIMT SRS programs. In this study, a comparison of three different quantitative numerical methods were performed for isolating and measuring the position of ball-bearings (BBs) used in the OAWL measurement. The three methods evaluated were: 1) feature extraction technique combined with manual intervention 2) a proprietary software utilizing optical image recognition (OIR) techniques, and 3) a machine learning (ML) model employing convolutional neural networks (CNNs). These methods were used to analyze OAWL datasets gathered from a OneIso phantom deployed on a Varian TrueBeam. The precision of localizing positional BBs within the OneIso QA phantom, analysis speed, and robustness were compared across the methods. Significantly, the trained ML model utilizing CNNs was found to exhibit superior precision, analysis speed, and efficiency compared to the other two methods. These results highlight the benefit in shifting from manual and OIR methods to that of ML techniques. The incorporation of CNNs in automated QA analysis can achieve improved precision, allowing for more rapid and wider adoption of SIMT SRS for treating intracranial metastases while preserving integrity of surrounding healthy tissues.
单中心多靶点(SIMT)立体定向放射外科手术(SRS)最近已成为治疗颅内肿瘤的一种强大治疗方案。凭借高特异性,SIMT SRS能够在保持相邻健康组织完整性并将对患者的神经认知损伤降至最低的同时,实现快速、高剂量的放射治疗。高度稳健和准确的质量保证(QA)测试对于将脱靶和对周围健康组织的损伤降至最低至关重要。我们开发了一种名为OneIso的新型QA体模,通过离轴温斯顿-卢茨(OAWL)方法精确测量离轴精度,以辅助SIMT SRS程序。在本研究中,对三种不同的定量数值方法进行了比较,用于分离和测量OAWL测量中使用的滚珠轴承(BBs)的位置。评估的三种方法分别为:1)特征提取技术结合人工干预;2)利用光学图像识别(OIR)技术的专有软件;3)采用卷积神经网络(CNNs)的机器学习(ML)模型。这些方法用于分析从部署在瓦里安TrueBeam上的OneIso体模收集的OAWL数据集。对这些方法在OneIso QA体模中定位BBs位置的精度、分析速度和稳健性进行了比较。值得注意的是,与其他两种方法相比,经过训练的利用CNNs的ML模型表现出更高的精度、分析速度和效率。这些结果凸显了从人工和OIR方法转向ML技术的益处。将CNNs纳入自动QA分析可以提高精度,从而使SIMT SRS在治疗颅内转移瘤时能够更快、更广泛地应用,同时保持周围健康组织的完整性。