Sequential Approach to Improve the Molecular Classification of Childhood Acute Lymphoblastic Leukemia

序贯方法改善儿童急性淋巴细胞白血病的分子分类

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作者:Chih-Hsiang Yu, Gang Wu, Chia-Ching Chang, Shiann-Tarng Jou, Meng-Yao Lu, Kai-Hsin Lin, Shu-Huey Chen, Kang-Hsi Wu, Fang-Liang Huang, Chao-Neng Cheng, Hsiu-Hao Chang, Dale Hedges, Jinn-Li Wang, Hsiu-Ju Yen, Meng-Ju Li, Shu-Wei Chou, Chen-Ting Hung, Ze-Shiang Lin, Chien-Yu Lin, Hsuan-Yu Chen, Yu-Ling

Abstract

Identification of specific leukemia subtypes is a key to successful risk-directed therapy in childhood acute lymphoblastic leukemia (ALL). Although RNA sequencing (RNA-seq) is the best approach to identify virtually all specific leukemia subtypes, the routine use of this method is too costly for patients in resource-limited countries. This study enrolled 295 patients with pediatric ALL from 2010 to 2020. Routine screening could identify major cytogenetic alterations in approximately 69% of B-cell ALL (B-ALL) cases by RT-PCR, DNA index, and multiplex ligation-dependent probe amplification. STIL-TAL1 was present in 33% of T-cell ALL (T-ALL) cases. The remaining samples were submitted for RNA-seq. More than 96% of B-ALL cases and 74% of T-ALL cases could be identified based on the current molecular classification using this sequential approach. Patients with Philadelphia chromosome-like ALL constituted only 2.4% of the entire cohort, a rate even lower than those with ZNF384-rearranged (4.8%), DUX4-rearranged (6%), and Philadelphia chromosome-positive (4.4%) ALL. Patients with ETV6-RUNX1, high hyperdiploidy, PAX5 alteration, and DUX4 rearrangement had favorable prognosis, whereas those with hypodiploid and KMT2A and MEF2D rearrangement ALL had unfavorable outcomes. With the use of multiplex ligation-dependent probe amplification, DNA index, and RT-PCR in B-ALL and RT-PCR in T-ALL followed by RNA-seq, childhood ALL can be better classified to improve clinical assessments.

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