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Self-learning computers for surgical planning and prediction of postoperative alignment

机译:用于外科手术规划和术后对准预测的自学计算机

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摘要

Computer-assisted methods for the prediction of postoperative alignment consist of a three step analysis: identification of anatomical landmark, definition of alignment objectives, and simulation of surgery. Recently, complex rules for the prediction of alignment have been proposed. Even though this kind of work leads to more personalized objectives, the number of parameters involved renders it difficult for clinical use, stressing the importance of developing computer-assisted tools. The evolution of our current technology, including machine learning and other types of advanced algorithms, will provide powerful tools that could be useful in improving surgical outcomes and alignment prediction. These tools can combine different types of advanced technologies, such as image recognition and shape modeling, and using this technique, computer-assisted methods are able to predict spinal shape. The development of powerful computer-assisted methods involves the integration of several sources of information such as radiographic parameters (X-rays, MRI, CT scan, etc.), demographic information, and unusual non-osseous parameters (muscle quality, proprioception, gait analysis data). In using a larger set of data, these methods will aim to mimic what is actually done by spine surgeons, leading to real tailor-made solutions.
机译:用于预测术后对准的计算机辅助方法包括三步分析:解剖标识的识别,对准目标的定义和手术模拟。最近,已经提出了用于预测对准预测的复杂规则。尽管这种工作导致更个性化的目标,但涉及临床使用难度的参数数量,强调开发计算机辅助工具的重要性。我们目前的技术的演变,包括机器学习和其他类型的先进算法,将提供强大的工具,可用于改善外科结果和对准预测。这些工具可以组合不同类型的先进技术,例如图像识别和形状建模,并使用该技术,计算机辅助方法能够预测椎体形状。强大的计算机辅助方法的开发涉及若干信息源(如射线照相参数(X射线,MRI,CT扫描等),人口统计学信息和异常的非骨质参数(肌肉质量,预知,步态)分析数据)。在使用较大的数据集中,这些方法旨在模仿脊椎外科医生实际完成的内容,导致真实量身定制的解决方案。

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