The Current Role of the Heavy/Light Chain Assay in the Diagnosis, Prognosis and Monitoring of Multiple Myeloma: an Evidence-Based Approach
Diagnostics(2021)
Hosp Univ Virgen de las Nieves | Hosp Univ Salamanca HUSAL | Binding Site Iberia | Hosp Univ Virgen del Rocio | Hosp Gen Univ Gregorio Maranon | Hosp Univ Infanta Leonor | Hosp Univ 12 Octubre | Inst Invest Biosanitaria Granada Ibs GRANADA | Clin Univ Navarra
Abstract
Despite tremendous progress being made in recent years, multiple myeloma (MM) remains a challenging disease. The laboratory plays a critical role in the overall management of patients. The diagnosis, prognosis, clinical monitoring and evaluation of the response are key moments in the clinical care process. Conventional laboratory methods have been and continue to be the basis of laboratory testing in monoclonal gammopathies, along with the serum free light chain test. However, more accurate methods are needed to achieve new and more stringent clinical goals. The heavy/light chain assay is a relatively new test which can overcome some of the limitations of the conventional methods for the evaluation of intact immunoglobulin MM patients. Here, we report an update of the evidence accumulated in recent years on this method regarding its use in MM.
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Key words
multiple myeloma (MM),heavy,<p>heavy/light chain (HLC) assay</p>,Hevylite(R),diagnosis,prognosis,monitoring
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