Orthopedics, Shanghai Public Health Clinical Center, Shanghai 250001, China.
Comput Math Methods Med. 2022 Sep 22;2022:8246510. doi: 10.1155/2022/8246510. eCollection 2022.
With the rapid development of modern medical information technology, hospitals are accumulating huge amounts of clinical data while providing medical services to patients, and in the era of big data, how to mine valuable information from the huge amount of clinical data so as to make new contributions to future disease diagnosis and medical research. In order to solve this problem, more and more scholars have introduced data mining techniques into the medical field in recent years, and mining and analysing medical data is a hot topic at present. If spinal TB is detected and treated early, not only can spinal deformities be prevented and treated but also the course of treatment can be shortened, the financial burden on the patient can be reduced, spinal function can be maintained, and eradication can be achieved without the need for surgical intervention. Early detection of spinal tuberculosis is the key to preventing and treating it. Therefore, in this paper, we use meta-analysis and data mining techniques to process and analyse the medical data of spinal tuberculosis disease, its main inflammatory factors expression characteristics, and the causes of patient recurrence.
随着现代医学信息技术的飞速发展,医院在为患者提供医疗服务的同时,也积累了大量的临床数据。在大数据时代,如何从海量的临床数据中挖掘有价值的信息,为未来的疾病诊断和医学研究做出新的贡献。为了解决这个问题,近年来,越来越多的学者将数据挖掘技术引入医学领域,挖掘和分析医学数据是当前的热门话题。如果能早期发现和治疗脊柱结核,不仅可以预防和治疗脊柱畸形,还可以缩短治疗过程,减轻患者的经济负担,保持脊柱功能,无需手术干预即可根治。早期发现脊柱结核是预防和治疗的关键。因此,本文采用荟萃分析和数据挖掘技术对脊柱结核疾病的医学数据、主要炎症因子表达特征以及患者复发的原因进行处理和分析。