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A weakly supervised deep learning model integrating noncontrasted computed tomography images and clinical factors facilitates haemorrhagic transformation prediction after intravenous thrombolysis in acute ischaemic stroke patients
被引:3
|作者:
Ru, Xiaoshuang
[1
]
Zhao, Shilong
[2
]
Chen, Weidao
[3
]
Wu, Jiangfen
[3
]
Yu, Ruize
[3
]
Wang, Dawei
[3
]
Dong, Mengxing
[3
]
Wu, Qiong
[4
]
Peng, Daoyong
[4
]
Song, Yang
[1
]
机构:
[1] Dalian Univ Technol, Dept Radiol, Cent Hosp, 826 Xinan Rd, Dalian 116033, Liaoning Provin, Peoples R China
[2] Dalian Univ, Dept Radiol, Affiliated Zhongshan Hosp, 6 Jiefang Rd, Dalian 116001, Liaoning Provin, Peoples R China
[3] InferVis Med Technol Co Ltd, Yuanyang Int Ctr, 25F,Bldg E, Beijing 100025, Peoples R China
[4] Dalian Univ Technol, Dept Neurol, Cent Hosp, 826 Xinan Rd, Dalian 116033, Liaoning Provin, Peoples R China
关键词:
Noncontrast computed tomography;
Haemorrhagic transformation;
Deep learning;
Machine learning;
Ischaemic stroke;
TISSUE-PLASMINOGEN ACTIVATOR;
SYMPTOMATIC INTRACEREBRAL HEMORRHAGE;
BRAIN-BARRIER PERMEABILITY;
HEALTH-CARE PROFESSIONALS;
INTRACRANIAL HEMORRHAGE;
RISK-FACTORS;
ALTEPLASE;
VALIDATION;
THERAPY;
SYSTEM;
D O I:
10.1186/s12938-023-01193-w
中图分类号:
R318 [生物医学工程];
学科分类号:
0831 ;
摘要:
Background: Haemorrhage transformation (HT) is a serious complication of intravenous thrombolysis (IVT) in acute ischaemic stroke (AIS). Accurate and timely prediction of the risk of HT before IVT may change the treatment decision and improve clinical prognosis. We aimed to develop a deep learning method for predicting HT after IVT for AIS using noncontrast computed tomography (NCCT) images.Methods: We retrospectively collected data from 828 AIS patients undergoing recombinant tissue plasminogen activator (rt-PA) treatment within a 4.5-h time window (n = 665) or of undergoing urokinase treatment within a 6-h time window (n = 163) and divided them into the HT group (n = 69) and non-HT group (n = 759). HT was defined based on the criteria of the European Cooperative Acute Stroke Study-II trial. To address the problems of indiscernible features and imbalanced data, a weakly supervised deep learning (WSDL) model for HT prediction was constructed based on multiple instance learning and active learning using admission NCCT images and clinical information in addition to conventional deep learning models. Threefold cross-validation and transfer learning were performed to confirm the robustness of the network. Of note, the predictive value of the commonly used scales in clinics associated with NCCT images (i.e., the HAT and SEDAN score) was also analysed and compared to measure the feasibility of our proposed DL algorithms.Results: Compared to the conventional DL and ML models, the WSDL model had the highest AUC of 0.799 (95% CI 0.712-0.883). Significant differences were observed between the WSDL model and five ML models (P < 0.05). The prediction performance of the WSDL model outperforms the HAT and SEDAN scores at the optimal operating point (threshold = 1.5). Further subgroup analysis showed that the WSDL model performed better for symptomatic intracranial haemorrhage (AUC = 0.833, F1 score = 0.909).Conclusions: Our WSDL model based on NCCT images had relatively good performance for predicting HT in AIS and may be suitable for assisting in clinical treatment decision-making.
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