Haifa, Israel.
Arthroscopy. 2022 Jul;38(7):2217-2218. doi: 10.1016/j.arthro.2022.01.041.
Complex statistical approaches are increasingly being used in the orthopaedic literature, and this is especially true in the field of sports medicine. Tools such as machine learning provide the opportunity to analyze certain research areas that would often require the complex assessment of large amounts of data. Generally, decision making is multifactorial and based upon experience, personal capabilities, available utilities, and literature. Given the difficulty associated with determining the optimal patient treatment, many studies have moved toward more complex statistical approaches to create algorithms that take large amounts of data and distill it into a formula that may guide surgeons to better patient outcomes while estimating and even optimizing costs. In the future, this clinical and economic information will play an important role in patient management.
复杂的统计方法在矫形文献中越来越多地被使用,这在运动医学领域尤其如此。机器学习等工具为分析某些研究领域提供了机会,这些领域通常需要对大量数据进行复杂的评估。一般来说,决策是多因素的,并且基于经验、个人能力、可用工具和文献。鉴于确定最佳患者治疗方法的困难,许多研究已经转向更复杂的统计方法,以创建算法,这些算法可以处理大量数据,并将其提炼成一个公式,从而指导外科医生获得更好的患者结果,同时估计甚至优化成本。在未来,这种临床和经济信息将在患者管理中发挥重要作用。