钻孔参数对鳞状颞骨声学钻孔特征的影响:一个分类多元回归分析

P. Brady, Martin Hill, Joseph Connell, John Barrett, B. Fennessy, P. O'sullivan, D. O'Hare
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引用次数: 2

摘要

本文研究了钻孔速度、毛刺类型、毛刺风格和笔划速度对手术钻孔解剖鳞状颞骨区域时产生的声学的影响。多元回归用于分析和预测过程中产生的音频的Mel频率倒谱。可见,每个钻孔参数及其高阶相互作用项对鳞状颞骨的声钻孔特征有显著影响。首次建立了一种分类多元回归模型,只需2秒的音频训练数据,就能一致预测颞骨鳞状骨的Mel频率倒谱,准确率达到97.78%。这是对以前报告的工作的重大进展。
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The effects of drilling parameters on the acoustic drilling signature of the squamous temporal bone: A categorical multivariate regressive analysis
This paper investigates the effects of drill speed, burr type, burr style, and stroke speed on the acoustics that are generated from a surgical drill when dissecting the squamous temporal bone region. Multivariate regression is used to analyse and predict the Mel frequency cepstrum of the audio that is generated during the procedure. It is seen that each of drilling parameters along with their higher order interaction terms has a significant affect on the acoustic drilling signature of the squamous temporal bone. Furthermore, it was established, for the first time, that a categorical multivariate regressive model could consistently predict the Mel frequency cepstrum of the squamous temporal bone with accuracy of 97.78% with only 2 seconds of audio training data. This represents a significant advance on previously reported work.
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