Mutations in STAT3 and TTN Associated with Clinical Outcomes in Large Granular Lymphocyte Leukemia

Rachel Filderman, Buckley Dowdle, Youssef Abubaker, David Vann
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Abstract

Large granular lymphocyte (LGL) leukemia is a rare, chronic leukemia associated with clinical manifestations of anemia (RBC < 4.5 million/mcL in males, < 4 million/mcL in females), neutropenia (ANC < 1500/mm3), and autoimmune disease. Progress has been made in identifying a significant and frequent mutation in the STAT3 gene among LGL patients; however, STAT signaling is still largely unexplained in about 60% of those LGL leukemia patients lacking STAT3 mutations. This paper sought to confirm previous studies regarding the association of a STAT3 mutation with clinical manifestations, as well as search for other significant mutations across the rest of the genome in order to determine whether the specific clinical features of autoimmune disease, anemia, and neutropenia present in LGL leukemia patients are associated with additional genomic mutations in LGL cells. As LGL leukemia is rare, presents heterogeneous conditions, and does not have a high mutation burden, our approach is distinct from standard approaches in cancer research where mutation rates are much higher. Methods of dimension reduction are employed in tandem with association analysis and decision trees to search for signals between significant genetic mutations and clinical manifestations of anemia, neutropenia, and autoimmune disease within the LGL patient sample. Results indicate an association exists between anemia and concurrent mutations in STAT3 and TTN (p = 0.03) in T-LGLL patients. Additionally, an association was identified between neutropenia and a mutation in either TTN (p = 0.049) or STAT3 (p = 0.03) in T-LGLL patients as well. These findings imply that TTN may be responsible for STAT activation in combination with a STAT3 mutation or independently in T-LGLL patients. Through XGBoost, 66% accuracy was achieved in predicting neutropenia and 55% accuracy in predicting anemia using gene mutations as the predictor variables. However, the relatively small sample size (N=116 patients), presents concerns of limited statistical power, and the expectation on the number of times these findings might be repeated in independent samples. The ideal sample size needed for an association test to have adequate statistical power was examined. Additionally, a review of past LGL leukemia publications was undertaken to compare the statistical power of their reported analyses. To obtain satisfactory statistical power in analyzing the association between a STAT3 gene mutation and neutropenia in the T-LGLL population (e.g. p ≤ 0.01, power = 0.9), the T-LGLL sample size must be at least 312 patients. This sample size exceeds not only that of the present study but also that in the majority of sample sizes in the LGLL literature. The pooling of extant LGLL datasets as well as the undertaking of new, major multi-site trials is, therefore, warranted.
STAT3和TTN突变与大颗粒淋巴细胞白血病的临床预后相关
大颗粒淋巴细胞(LGL)白血病是一种罕见的慢性白血病,临床表现为贫血(男性RBC < 450万/mcL,女性< 400万/mcL)、中性粒细胞减少(ANC < 1500/mm3)和自身免疫性疾病。在确定LGL患者中STAT3基因的显著和频繁突变方面取得了进展;然而,在大约60%缺乏STAT3突变的LGL白血病患者中,STAT信号在很大程度上仍然无法解释。本文试图证实先前关于STAT3突变与临床表现相关性的研究,并在其余基因组中寻找其他显著突变,以确定LGL白血病患者中存在的自身免疫性疾病、贫血和中性粒细胞减少症的特定临床特征是否与LGL细胞中的其他基因组突变相关。由于LGL白血病罕见,呈现异质性,并且没有很高的突变负担,我们的方法不同于突变率高得多的癌症研究的标准方法。将降维方法与关联分析和决策树相结合,在LGL患者样本中寻找显著基因突变与贫血、中性粒细胞减少症和自身免疫性疾病的临床表现之间的信号。结果表明,在T-LGLL患者中,贫血与STAT3和TTN的并发突变存在关联(p = 0.03)。此外,在T-LGLL患者中,中性粒细胞减少症与TTN (p = 0.049)或STAT3 (p = 0.03)突变之间也存在关联。这些发现表明TTN可能与STAT3突变联合或单独在T-LGLL患者中负责STAT激活。通过XGBoost,以基因突变作为预测变量,预测中性粒细胞减少症的准确率达到66%,预测贫血的准确率达到55%。然而,相对较小的样本量(N=116例患者)存在统计效力有限的问题,并且这些发现可能在独立样本中重复的次数的期望。检验了关联检验所需的理想样本量,使其具有足够的统计效力。此外,回顾过去的LGL白血病出版物,以比较他们报道的分析的统计能力。为了在分析T-LGLL人群中STAT3基因突变与中性粒细胞减少症之间的关系时获得令人满意的统计效力(例如p≤0.01,power = 0.9), T-LGLL样本量必须至少为312例患者。这个样本量不仅超过了本研究的样本量,也超过了LGLL文献中大多数样本量的样本量。因此,有必要汇集现有的LGLL数据集以及开展新的、主要的多地点试验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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