Yuen Jason, Goyal Abhinav, Kaufmann Timothy J, Jackson Lauren M, Miller Kai J, Klassen Bryan T, Dhawan Neha, Lee Kendall H, Lehman Vance T
1Department of Neurologic Surgery, Mayo Clinic, Rochester, Minnesota.
4Department of Radiology, Mayo Clinic, Rochester, Minnesota.
J Neurosurg. 2022 Jul 1;138(1):50-57. doi: 10.3171/2022.5.JNS22350. Print 2023 Jan 1.
One of the key metrics that is used to predict the likelihood of success of MR-guided focused ultrasound (MRgFUS) thalamotomy is the overall calvarial skull density ratio (SDR). However, this measure does not fully predict the sonication parameters that would be required or the technical success rates. The authors aimed to assess other skull characteristics that may also contribute to technical success.
The authors retrospectively studied consecutive patients with essential tremor who were treated by MRgFUS at their center between 2017 and 2021. They evaluated the correlation between the different treatment parameters, particularly maximum power and energy delivered, with a range of patients' skull metrics and demographics. Machine learning algorithms were applied to investigate whether sonication parameters could be predicted from skull density metrics alone and whether including combined local transducer SDRs with overall calvarial SDR would increase model accuracy.
A total of 62 patients were included in the study. The mean age was 77.1 (SD 9.2) years, and 78% of treatments (49/63) were performed in males. The mean SDR was 0.51 (SD 0.10). Among the evaluated metrics, SDR had the highest correlation with the maximum power used in treatment (ρ = -0.626, p < 0.001; proportion of local SDR values ≤ 0.8 group also had ρ = +0.626, p < 0.001) and maximum energy delivered (ρ = -0.680, p < 0.001). Machine learning algorithms achieved a moderate ability to predict maximum power and energy required from the local and overall SDRs (accuracy of approximately 80% for maximum power and approximately 55% for maximum energy), and high ability to predict average maximum temperature reached from the local and overall SDRs (approximately 95% accuracy).
The authors compared a number of skull metrics against SDR and showed that SDR was one of the best indicators of treatment parameters when used alone. In addition, a number of other machine learning algorithms are proposed that may be explored to improve its accuracy when additional data are obtained. Additional metrics related to eventual sonication parameters should also be identified and explored.
用于预测磁共振引导聚焦超声(MRgFUS)丘脑切开术成功可能性的关键指标之一是颅骨整体密度比(SDR)。然而,这一指标并不能完全预测所需的超声参数或技术成功率。作者旨在评估其他可能也有助于技术成功的颅骨特征。
作者回顾性研究了2017年至2021年期间在其中心接受MRgFUS治疗的连续性特发性震颤患者。他们评估了不同治疗参数,特别是最大功率和传递的能量,与一系列患者颅骨指标和人口统计学特征之间的相关性。应用机器学习算法来研究仅根据颅骨密度指标能否预测超声参数,以及将局部换能器SDR与颅骨整体SDR相结合是否会提高模型准确性。
共有62例患者纳入研究。平均年龄为77.1(标准差9.2)岁,78%的治疗(49/63)在男性中进行。平均SDR为0.51(标准差0.10)。在评估的指标中,SDR与治疗中使用的最大功率相关性最高(ρ = -0.626,p < 0.001;局部SDR值≤0.8组的比例也有ρ = +0.626,p < 0.001)以及传递的最大能量(ρ = -0.680,p < 0.001)。机器学习算法在根据局部和整体SDR预测最大功率和所需能量方面具有中等能力(最大功率的准确率约为80%,最大能量的准确率约为55%),而在根据局部和整体SDR预测达到的平均最高温度方面具有较高能力(准确率约为95%)。
作者将多个颅骨指标与SDR进行了比较,结果表明单独使用时SDR是治疗参数的最佳指标之一。此外,还提出了一些其他机器学习算法,当获得更多数据时可探索这些算法以提高其准确性。还应识别和探索与最终超声参数相关的其他指标。