Machine learning-based predictive model for the development of thrombolysis resistance in patients with acute ischemic stroke

被引:0
作者
Wang, Xiaorui [1 ]
Luo, Song [1 ]
Cui, Xue [1 ]
Qu, Hongdang [1 ]
Zhao, Yujie [1 ]
Liao, Qirong [1 ]
机构
[1] Bengbu Med Univ, Affiliated Hosp 1, Dept Neurol, Bengbu 233004, Peoples R China
关键词
Acute ischaemic stroke; Intravenous thrombolysis; Machine learning; Prediction model; BLOOD UREA NITROGEN; INTRAVENOUS THROMBOLYSIS; IMPROVEMENT;
D O I
10.1186/s12883-024-03781-2
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: The objective of this study was to establish a predictive model utilizing machine learning techniques to anticipate the likelihood of thrombolysis resistance (TR) in acute ischaemic stroke (AIS) patients undergoing recombinant tissue plasminogen activator (rt-PA) intravenous thrombolysis, given that nearly half of such patients exhibit poor clinical outcomes. Methods: Retrospective clinical data were collected from AIS patients who underwent intravenous thrombolysis with rt-PA at the First Affiliated Hospital of Bengbu Medical University. Thrombolysis resistance was defined as ([National Institutes of Health Stroke Scale (NIHSS) at admission - 24-hour NIHSS] x 100%/ NIHSS at admission) <= 30%. In this study, we developed five machine learning models: logistic regression (LR), extreme gradient boosting (XGBoost), support vector machine (SVM), the least absolute shrinkage and selection operator (LASSO), and random forest (RF). We assessed the model's performance by using receiver operating characteristic (ROC) curve, calibration curve, and decision curve analysis (DCA), and presented the results through a nomogram. Results: This study included a total of 218 patients with AIS who were treated with intravenous thrombolysis, 88 patients experienced TR. Among the five machine learning models, the LASSO model performed the best. The area under the curve (AUC) on the testing group was 0.765 (sensitivity: 0.767, specificity: 0.694, accuracy: 0.727). The apparent curve in the calibration curve was similar to the ideal curve, and DCA showed a positive net benefit. Key features associated with TR included NIHSS at admission, blood glucose, white blood cell count, neutrophil count, and blood urea nitrogen. Conclusion: Machine learning methods with multiple clinical variables can help in early screening of patients at high risk of thrombolysis resistance, particularly in contexts where healthcare resources are limited.
引用
收藏
页数:10
相关论文
共 39 条
  • [1] A Prehospital Triage System to Detect Traumatic Intracranial Hemorrhage Using Machine Learning Algorithms
    Abe, Daisu
    Inaji, Motoki
    Hase, Takeshi
    Takahashi, Shota
    Sakai, Ryosuke
    Ayabe, Fuga
    Tanaka, Yoji
    Otomo, Yasuhiro
    Maehara, Taketoshi
    [J]. JAMA NETWORK OPEN, 2022, 5 (06) : E2216393
  • [2] Redefined Measure of Early Neurological Improvement Shows Treatment Benefit of Alteplase Over Placebo
    Agarwal, Shashank
    Scher, Erica
    Lord, Aaron
    Frontera, Jennifer
    Ishida, Koto
    Torres, Jose
    Rostanski, Sara
    Mistry, Eva
    Mac Grory, Brian
    Cutting, Shawna
    Burton, Tina
    Silver, Brian
    Liberman, Ava L.
    Lerario, Mackenzie P.
    Furie, Karen
    Grotta, James
    Khatri, Pooja
    Saver, Jeffrey
    Yaghi, Shadi
    [J]. STROKE, 2020, 51 (04) : 1226 - 1230
  • [3] Elevated blood urea nitrogen level as a predictor of mortality in patients admitted for decompensated heart failure
    Aronson, D
    Mittlernan, MA
    Burger, AJ
    [J]. AMERICAN JOURNAL OF MEDICINE, 2004, 116 (07) : 466 - 473
  • [4] Multiple Sclerosis Diagnosis Using Machine Learning and Deep Learning: Challenges and Opportunities
    Aslam, Nida
    Khan, Irfan Ullah
    Bashamakh, Asma
    Alghool, Fatima A.
    Aboulnour, Menna
    Alsuwayan, Noorah M.
    Alturaif, Rawa'a K.
    Brahimi, Samiha
    Aljameel, Sumayh S.
    Al Ghamdi, Kholoud
    [J]. SENSORS, 2022, 22 (20)
  • [5] Clinical Deterioration Following Middle Cerebral Artery Hemodynamic Changes after Intravenous Thrombolysis for Acute Ischemic Stroke
    Baizabal-Carvallo, Jose Fidel
    Alonso-Juarez, Marlene
    Samson, Yves
    [J]. JOURNAL OF STROKE & CEREBROVASCULAR DISEASES, 2014, 23 (02) : 254 - 258
  • [6] Impact of high glucose levels and glucose lowering on risk of ischaemic stroke: a Mendelian randomisation study and meta-analysis
    Benn, Marianne
    Emanuelsson, Frida
    Tybjaerg-Hansen, Anne
    Nordestgaard, Borge G.
    [J]. DIABETOLOGIA, 2021, 64 (07) : 1492 - 1503
  • [7] Atrial fibrillation
    Brundel, Bianca J. J. M.
    Ai, Xun
    Hills, Mellanie True
    Kuipers, Myrthe F.
    Lip, Gregory Y. H.
    de Groot, Natasja M. S.
    [J]. NATURE REVIEWS DISEASE PRIMERS, 2022, 8 (01)
  • [8] Functional Dynamics of Neutrophils After Ischemic Stroke
    Cai, Wei
    Liu, Sanxin
    Hu, Mengyan
    Huang, Feng
    Zhu, Qiang
    Qiu, Wei
    Hu, Xiaoming
    Colello, Jacob
    Zheng, Song Guo
    Lu, Zhengqi
    [J]. TRANSLATIONAL STROKE RESEARCH, 2020, 11 (01) : 108 - 121
  • [9] Machine learning is an effective method to predict the 90-day prognosis of patients with transient ischemic attack and minor stroke
    Chen, Si-Ding
    You, Jia
    Yang, Xiao-Meng
    Gu, Hong-Qiu
    Huang, Xin-Ying
    Liu, Huan
    Feng, Jian-Feng
    Jiang, Yong
    Wang, Yong-Jun
    [J]. BMC MEDICAL RESEARCH METHODOLOGY, 2022, 22 (01)
  • [10] [中华医学会神经病学分会 Chinese Society of Neurology], 2018, [中华神经科杂志, Chinese Journal of Neurology], V51, P666