免疫球蛋白轻链
浊度法
免疫分析
卡帕
单克隆
免疫固定
人口
淀粉样变性
血清蛋白电泳
医学
单克隆抗体
淀粉样变性
多发性骨髓瘤
内科学
抗体
免疫学
数学
几何学
环境卫生
作者
Jerry A. Katzmann,Raynell Clark,Roshini S. Abraham,Sandra C. Bryant,James Lymp,A.R. Bradwell,Robert A. Kyle
出处
期刊:PubMed
日期:2002-09-01
卷期号:48 (9): 1437-44
被引量:604
摘要
The detection of monoclonal free light chains (FLCs) is an important diagnostic aid for a variety of monoclonal gammopathies and is especially important in light-chain diseases, such as light-chain myeloma, primary systemic amyloidosis, and light-chain-deposition disease. These diseases are more prevalent in the elderly, and assays to detect and quantify abnormal amounts of FLCs require reference intervals that include elderly donors.We used an automated immunoassay for FLCs and sera from a population 21-90 years of age. We used the calculated reference and diagnostic intervals to compare FLC results with those obtained by immunofixation (IFE) to detect low concentrations of monoclonal kappa and lambda FLCs in the sera of patients with monoclonal gammopathies.Serum kappa and lambda FLCs increased with population age, with an apparent change for those >80 years. This trend was lost when the FLC concentration was normalized to cystatin C concentration. The ratio of kappa FLC to lambda FLC (FLC K/L) did not exhibit an age-dependent trend. The diagnostic interval for FLC K/L was 0.26-1.65. The 95% reference interval for kappa FLC was 3.3-19.4 mg/L, and that for lambda FLC was 5.7-26.3 mg/L. Detection and quantification of monoclonal FLCs by nephelometry were more sensitive than IFE in serum samples from patients with primary systemic amyloidosis and light-chain-deposition disease.Reference and diagnostic intervals for serum FLCs have been developed for use with a new, automated immunoassay that makes the detection and quantification of monoclonal FLCs easier and more sensitive than with current methods. The serum FLC assay complements IFE and allows quantification of FLCs in light-chain-disease patients who have no detectable serum or urine M-spike.
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