Machine learning-based biomarker screening for acute myeloid leukemia prognosis and therapy from diverse cell-death patterns

被引:4
作者
Qin, Yu [1 ]
Pu, Xuexue [2 ]
Hu, Dingtao [3 ]
Yang, Mingzhen [1 ]
机构
[1] Anhui Med Univ, Dept Hematol, Affiliated Hosp 1, 218 Jixi Rd, Hefei 230022, Anhui, Peoples R China
[2] Anhui Med Univ, Affiliated Hosp 1, Dept Crit Care Med, 218 Jixi Rd, Hefei 230022, Anhui, Peoples R China
[3] Naval Med Univ, Clin Canc Inst, Ctr Translat Med, 800 Xiangyin Rd, Shanghai, Peoples R China
来源
SCIENTIFIC REPORTS | 2024年 / 14卷 / 01期
关键词
AML; Immunological features; Machine learning; PCD; Prognosis drug response; AUTOPHAGY; GENES;
D O I
10.1038/s41598-024-68755-3
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Acute myeloid leukemia (AML) exhibits pronounced heterogeneity and chemotherapy resistance. Aberrant programmed cell death (PCD) implicated in AML pathogenesis suggests PCD-related signatures could serve as biomarkers to predict clinical outcomes and drug response. We utilized 13 PCD pathways, including apoptosis, pyroptosis, ferroptosis, autophagy, necroptosis, cuproptosis, parthanatos, entotic cell death, netotic cell death, lysosome-dependent cell death, alkaliptosis, oxeiptosis, and disulfidptosis to develop predictive models based on 73 machine learning combinations from 10 algorithms. Bulk RNA-sequencing, single-cell RNA-sequencing transcriptomic data, and matched clinicopathological information were obtained from the TCGA-AML, Tyner, and GSE37642-GPL96 cohorts. These datasets were leveraged to construct and validate the models. Additionally, in vitro experiments were conducted to substantiate the bioinformatics findings. The machine learning approach established a 6-gene pan-programmed cell death-related genes index (PPCDI) signature. Validation in two external cohorts showed high PPCDI associated with worse prognosis in AML patients. Incorporating PPCDI with clinical variables, we constructed several robust prognostic nomograms that accurately predicted prognosis of AML patients. Multi-omics analysis integrating bulk and single-cell transcriptomics revealed correlations between PPCDI and immunological features, delineating the immune microenvironment landscape in AML. Patients with high PPCDI exhibited resistance to conventional chemotherapy like doxorubicin but retained sensitivity to dasatinib and methotrexate (FDA-approved drugs for other leukemias), suggesting the potential of PPCDI to guide personalized therapy selection in AML. In summary, we developed a novel PPCDI model through comprehensive analysis of diverse programmed cell death pathways. This PPCDI signature demonstrates great potential in predicting clinical prognosis and drug sensitivity phenotypes in AML patients.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Discrimination and Calibration of Clinical Prediction Models Users' Guides to the Medical Literature
    Alba, Ana Carolina
    Agoritsas, Thomas
    Walsh, Michael
    Hanna, Steven
    Iorio, Alfonso
    Devereaux, P. J.
    McGinn, Thomas
    Guyatt, Gordon
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2017, 318 (14): : 1377 - 1384
  • [2] Age and acute myeloid leukemia
    Appelbaum, FR
    Gundacker, H
    Head, DR
    Slovak, ML
    Willman, CL
    Godwin, JE
    Anderson, JE
    Petersdorf, SH
    [J]. BLOOD, 2006, 107 (09) : 3481 - 3485
  • [3] Estimating and comparing time-dependent areas under receiver operating characteristic curves for censored event times with competing risks
    Blanche, Paul
    Dartigues, Jean-Francois
    Jacqmin-Gadda, Helene
    [J]. STATISTICS IN MEDICINE, 2013, 32 (30) : 5381 - 5397
  • [4] Inhibition of Nrf2-mediated glucose metabolism by brusatol synergistically sensitizes acute myeloid leukemia to Ara-C
    Cheng, Cong
    Yuan, Fang
    Chen, Xiao-Ping
    Zhang, Wei
    Zhao, Xie-Lan
    Jiang, Zhi-Ping
    Zhou, Hong-Hao
    Zhou, Gan
    Cao, Shan
    [J]. BIOMEDICINE & PHARMACOTHERAPY, 2021, 142
  • [5] Up-regulation of DDIT4 predicts poor prognosis in acute myeloid leukaemia
    Cheng, Zhiheng
    Dai, Yifeng
    Pang, Yifan
    Jiao, Yang
    Liu, Yan
    Cui, Longzhen
    Quan, Liang
    Qian, Tingting
    Zeng, Tiansheng
    Si, Chaozeng
    Huang, Wenhui
    Chen, Jinghong
    Pang, Ying
    Ye, Xu
    Shi, Jinlong
    Fu, Lin
    [J]. JOURNAL OF CELLULAR AND MOLECULAR MEDICINE, 2020, 24 (01) : 1067 - 1075
  • [6] Large-scale public data reuse to model immunotherapy response and resistance
    Fu, Jingxin
    Li, Karen
    Zhang, Wubing
    Wan, Changxin
    Zhang, Jing
    Jiang, Peng
    Liu, X. Shirley
    [J]. GENOME MEDICINE, 2020, 12 (01)
  • [7] Dock-family exchange factors in cell migration and disease
    Gadea, Gilles
    Blangy, Anne
    [J]. EUROPEAN JOURNAL OF CELL BIOLOGY, 2014, 93 (10-12) : 466 - 477
  • [8] Integrative Analysis of Complex Cancer Genomics and Clinical Profiles Using the cBioPortal
    Gao, Jianjiong
    Aksoy, Buelent Arman
    Dogrusoz, Ugur
    Dresdner, Gideon
    Gross, Benjamin
    Sumer, S. Onur
    Sun, Yichao
    Jacobsen, Anders
    Sinha, Rileen
    Larsson, Erik
    Cerami, Ethan
    Sander, Chris
    Schultz, Nikolaus
    [J]. SCIENCE SIGNALING, 2013, 6 (269) : pl1
  • [9] A phase 1 clinical trial of single-agent selinexor in acute myeloid leukemia
    Garzon, Ramiro
    Savona, Michael
    Baz, Rachid
    Andreeff, Michael
    Gabrail, Nashat
    Gutierrez, Martin
    Savoie, Lynn
    Mau-Sorensen, Paul Morten
    Wagner-Johnston, Nina
    Yee, Karen
    Unger, Thaddeus J.
    Saint-Martin, Jean-Richard
    Carlson, Robert
    Rashal, Tami
    Kashyap, Trinayan
    Klebanov, Boris
    Shacham, Sharon
    Kauffman, Michael
    Stone, Richard
    [J]. BLOOD, 2017, 129 (24) : 3165 - 3174
  • [10] Single-cell transcriptional diversity is a hallmark of developmental potential
    Gulati, Gunsagar S.
    Sikandar, Shaheen S.
    Wesche, Daniel J.
    Manjunath, Anoop
    Bharadwaj, Anjan
    Berger, Mark J.
    Ilagan, Francisco
    Kuo, Angera H.
    Hsieh, Robert W.
    Cai, Shang
    Zabala, Maider
    Scheeren, Ferenc A.
    Lobo, Neethan A.
    Qian, Dalong
    Yu, Feiqiao B.
    Dirbas, Frederick M.
    Clarke, Michael F.
    Newman, Aaron M.
    [J]. SCIENCE, 2020, 367 (6476) : 405 - +