Zhong Fangmin, Yao Fangyi, Liu Jing, Fang Qun, Yu Xiajing, Huang Bo, Wang Xiaozhong
Jiangxi Province Key Laboratory of Immunology and Inflammation, Jiangxi Provincial Clinical Research Center for Laboratory Medicine, Department of Clinical Laboratory, The Second Affiliated Hospital, Jiangxi Medical College, Nanchang University, Nanchang, Jiangxi, China.
Front Immunol. 2025 May 28;16:1570903. doi: 10.3389/fimmu.2025.1570903. eCollection 2025.
Previous studies have shown that autophagy is closely related to the occurrence, development, and treatment resistance of chronic myeloid leukemia (CML) and has dual roles in promoting cell survival and inducing cell death.
We analyzed autophagy levels in CML samples via transcriptome data and evaluated the relationships between autophagy and the immune microenvironment, treatment response, and disease progression. A consensus clustering algorithm was used to identify autophagy-related molecular subtypes. The value of autophagy-related genes (ARGs) in diagnosis and treatment evaluation was analyzed and verified by a variety of machine learning algorithms.
Compared with normal samples, CML samples had significantly lower autophagy scores and more downregulated ARGs. The autophagy score was positively correlated with the activity of immune and signal transduction-related pathways and negatively correlated with proliferation-related pathways. Patients with high autophagy scores had a greater proportion of regulatory T-cell infiltration and greater cytokine-cytokine receptor interaction signaling pathway activity, while patients with low autophagy scores had greater γδT cell infiltration and PD-1 expression. Low autophagy scores are also associated with malignant progression and nonresponse to treatment. The immune landscape and chemotherapy sensitivity significantly differed between the two autophagy-related molecular subtypes. Three diagnostic ARGs (FOXO1, TUSC1, and ATG4A) were identified by support vector machine recursive feature elimination, least absolute shrinkage selection operator, and random forest algorithms, and the combined diagnostic efficiency of the three was further improved. The diagnostic value of the three ARGs was verified by an additional validation cohort and our clinical real-world clinical cohort, and they can also be used for the differential diagnosis of CML from other hematological malignancies.
Our study revealed that CML samples exhibit decreased autophagy, and autophagy may induce Tregs to undergo immunosuppression through cytokines. Autophagy-related molecular subtypes are helpful for guiding the clinical treatment of CML. The identification of ARGs by a variety of machine learning algorithms has potential clinical application value.
先前的研究表明,自噬与慢性髓性白血病(CML)的发生、发展及治疗耐药密切相关,且在促进细胞存活和诱导细胞死亡方面具有双重作用。
我们通过转录组数据分析CML样本中的自噬水平,并评估自噬与免疫微环境、治疗反应及疾病进展之间的关系。使用一致性聚类算法来识别自噬相关分子亚型。通过多种机器学习算法分析并验证自噬相关基因(ARG)在诊断和治疗评估中的价值。
与正常样本相比,CML样本的自噬评分显著降低,且更多的ARG表达下调。自噬评分与免疫及信号转导相关通路的活性呈正相关,与增殖相关通路呈负相关。自噬评分高的患者调节性T细胞浸润比例更高,细胞因子 - 细胞因子受体相互作用信号通路活性更强,而自噬评分低的患者γδT细胞浸润和PD - 1表达更高。低自噬评分也与恶性进展及治疗无反应相关。两种自噬相关分子亚型之间的免疫格局和化疗敏感性存在显著差异。通过支持向量机递归特征消除、最小绝对收缩选择算子和随机森林算法鉴定出三个诊断性ARG(FOXO1、TUSC1和ATG4A),三者联合诊断效率进一步提高。这三个ARG的诊断价值在另外的验证队列和我们的临床实际临床队列中得到验证,它们还可用于CML与其他血液系统恶性肿瘤的鉴别诊断。
我们的研究表明,CML样本表现出自噬降低,且自噬可能通过细胞因子诱导调节性T细胞产生免疫抑制作用。自噬相关分子亚型有助于指导CML的临床治疗。通过多种机器学习算法鉴定ARG具有潜在的临床应用价值。