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Expert consensus on Prospective Precision Diagnosis and Treatment Strategies for Osteoporotic Fractures
8
Zitationen
35
Autoren
2024
Jahr
Abstract
Osteoporotic fractures are the most severe complications of osteoporosis, characterized by poor bone quality, difficult realignment and fixation, slow fracture healing, and a high risk of recurrence. Clinically managing these fractures is relatively challenging, and in the context of rapid aging, they pose significant social hazards. The rapid advancement of disciplines such as biophysics and biochemistry brings new opportunities for future medical diagnosis and treatment. However, there has been limited attention to precision diagnosis and treatment strategies for osteoporotic fractures both domestically and internationally. In response to this, the Chinese Medical Association Orthopaedic Branch Youth Osteoporosis Group, Chinese Geriatrics Society Geriatric Orthopaedics Committee, Chinese Medical Doctor Association Orthopaedic Physicians Branch Youth Committee Osteoporosis Group, and Shanghai Association of Integrated Traditional Chinese and Western Medicine Osteoporosis Professional Committee have collaborated to develop this consensus. It aims to elucidate emerging technologies that may play a pivotal role in both diagnosis and treatment, advocating for clinicians to embrace interdisciplinary approaches and incorporate these new technologies into their practice. Ultimately, the goal is to improve the prognosis and quality of life for elderly patients with osteoporotic fractures.
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Autoren
- Yan Hu
- Xiaoqun Li
- Xiao Chen
- Sicheng Wang
- Liehu Cao
- Hao Zhang
- Yunfei Zhang
- Zhiwei Wang
- Baoqing Yu
- Peijian Tong
- Qiang Zhou
- Feng Niu
- Weiguo Yang
- Wencai Zhang
- Shijie Chen
- Qiang Yang
- Tao Shen
- Peng Zhang
- Yong Zhang
- Jun Miao
- Haodong Lin
- Jinwu Wang
- Lei Wang
- Xin Ma
- Hongjian Liu
- Ilia Stambler
- Long Bai
- Han Liu
- Yingying Jing
- Guohui Liu
- Xinglong Wang
- Dongliang Wang
- Zhongmin Shi
- Robert Chunhua Zhao
- Jiacan Su
Institutionen
- Shanghai Jiao Tong University(CN)
- XinHua Hospital(CN)
- Zhongshan Hospital(CN)
- Second Military Medical University(CN)
- Eastern Hepatobiliary Surgery Hospital(CN)
- Pudong New Area People's Hospital(CN)
- Zhejiang Provincial Hospital of TCM(CN)
- Chongqing Medical University(CN)
- First Bethune Hospital of Jilin University(CN)
- First Affiliated Hospital of Jinan University(CN)
- Central South University(CN)
- Third Xiangya Hospital(CN)
- Tianjin Hospital(CN)
- Shandong First Medical University(CN)
- Shandong Provincial Hospital(CN)
- Shanghai First People's Hospital(CN)
- Shanghai Ninth People's Hospital(CN)
- Ruijin Hospital(CN)
- Shanghai Sixth People's Hospital(CN)
- Shanghai University(CN)
- First Affiliated Hospital of Zhengzhou University(CN)
- Bar-Ilan University(IL)
- Wuhan Union Hospital(CN)
- Chinese Academy of Medical Sciences & Peking Union Medical College(CN)