医学
多发性骨髓瘤
置信区间
危险系数
内固定
放射治疗
比例危险模型
单变量分析
核医学
外科
放射科
内科学
多元分析
作者
Adnan Elhammali,Sarah A. Milgrom,Behrang Amini,Jillian R. Gunther,Alison Yoder,Ethan B. Ludmir,Bryan S. Moon,Donna M. Weber,Sheeba K. Thomas,Naveen Garg,Elisabet E. Manasanch,Krina K. Patel,Robert Z. Orlowski,Hans C. Lee,Justin E. Bird,Robert L. Satcher,Patrick P. Lin,Chelsea C. Pinnix,Bouthaina S. Dabaja
标识
DOI:10.1016/j.clml.2019.04.015
摘要
Purpose To characterize local relapse after surgical fixation and postoperative radiotherapy (RT) for multiple myeloma (MM) with cortical involvement of long bones. Patients and Methods We retrospectively identified patients with MM involving cortical long bones treated with surgical fixation followed by postoperative RT at our institution. Local failures, defined as radiographic recurrence along the surgical hardware, were documented, and potential associations of independent variables (RT dose, fractionation, and extent of hardware coverage) with local failure were assessed by univariate Cox regression. Results We identified 33 patients with 40 treated sites with a median follow-up of 25.7 months; 68% of treatments were for pathologic fracture, and 32% were for impending fracture. The most common dose and fractionation were 20 to 25 Gy in 8 to 12 fractions. On average, 76% of the surgical hardware was covered by the postoperative RT field (median, 80%; range, 28%-100%). Local failure was observed in 5 cases (12.5%), 2 within the RT field and 3 out of field. None of the relapses resulted in hardware failure, and 2 were retreated with RT. The extent of hardware coverage predicted disease relapse along the hardware (hazard ratio = 6.44; 95% confidence interval, 1.09-37.97; P = .04); however, total RT dose, biologically effective dose, and number of fractions did not. Conclusion After internal fixation of long bones with MM, full hardware coverage with the RT field could reduce the risk, though small, of disease developing in the future in the proximate hardware. Postoperative RT doses of 20 to 25 Gy in 8 to 10 fractions can achieve excellent local control.
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