Machine Learning for Onset Prediction of Patients with Intracerebral Hemorrhage

被引:4
|
作者
Rusche, Thilo [1 ]
Wasserthal, Jakob [1 ]
Breit, Hanns-Christian [1 ]
Fischer, Urs [2 ]
Guzman, Raphael [3 ]
Fiehler, Jens [4 ]
Psychogios, Marios-Nikos [1 ]
Sporns, Peter B. [1 ,4 ,5 ]
机构
[1] Univ Hosp Basel, Dept Neuroradiol, Clin Radiol & Nucl Med, CH-4031 Basel, Switzerland
[2] Univ Hosp Basel, Dept Neurol, CH-4031 Basel, Switzerland
[3] Univ Hosp Basel, Dept Neurosurg, CH-4031 Basel, Switzerland
[4] Univ Med Ctr Hamburg Eppendorf, Dept Diagnost & Intervent Neuroradiol, D-55131 Hamburg, Germany
[5] Stadtspital Zurich, Dept Radiol & Neuroradiol, CH-8063 Zurich, Switzerland
关键词
artificial intelligence; onset prediction; intracerebral hemorrhage; machine learning; SPOT SIGN; OUTCOME PREDICTION; BLEND SIGN; MANAGEMENT; ALGORITHM; CT;
D O I
10.3390/jcm12072631
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Objective: Intracerebral hemorrhage (ICH) has a high mortality and long-term morbidity and thus has a significant overall health-economic impact. Outcomes are especially poor if the exact onset is unknown, but reliable imaging-based methods for onset estimation have not been established. We hypothesized that onset prediction of patients with ICH using artificial intelligence (AI) may be more accurate than human readers. Material and Methods: A total of 7421 computed tomography (CT) datasets between January 2007-July 2021 from the University Hospital Basel with confirmed ICH were extracted and an ICH-segmentation algorithm as well as two classifiers (one with radiomics, one with convolutional neural networks) for onset estimation were trained. The classifiers were trained based on the gold standard of 644 datasets with a known onset of >1 and <48 h. The results of the classifiers were compared to the ratings of two radiologists. Results: Both the AI-based classifiers and the radiologists had poor discrimination of the known onsets, with a mean absolute error (MAE) of 9.77 h (95% CI (confidence interval) = 8.52-11.03) for the convolutional neural network (CNN), 9.96 h (8.68-11.32) for the radiomics model, 13.38 h (11.21-15.74) for rater 1 and 11.21 h (9.61-12.90) for rater 2, respectively. The results of the CNN and radiomics model were both not significantly different to the mean of the known onsets (p = 0.705 and p = 0.423). Conclusions: In our study, the discriminatory power of AI-based classifiers and human readers for onset estimation of patients with ICH was poor. This indicates that accurate AI-based onset estimation of patients with ICH based only on CT-data may be unlikely to change clinical decision making in the near future. Perhaps multimodal AI-based approaches could improve ICH onset prediction and should be considered in future studies.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] A machine learning approach for predicting perihematomal edema expansion in patients with intracerebral hemorrhage
    Chen, Yihao
    Qin, Chenchen
    Chang, Jianbo
    Lyu, Yan
    Zhang, Qinghua
    Ye, Zeju
    Li, Zhaojian
    Tian, Fengxuan
    Ma, Wenbin
    Wei, Junji
    Feng, Ming
    Yao, Jianhua
    Wang, Renzhi
    EUROPEAN RADIOLOGY, 2023, 33 (06) : 4052 - 4062
  • [22] A machine learning approach for predicting perihematomal edema expansion in patients with intracerebral hemorrhage
    Yihao Chen
    Chenchen Qin
    Jianbo Chang
    Yan Lyu
    Qinghua Zhang
    Zeju Ye
    Zhaojian Li
    Fengxuan Tian
    Wenbin Ma
    Junji Wei
    Ming Feng
    Jianhua Yao
    Renzhi Wang
    European Radiology, 2023, 33 : 4052 - 4062
  • [23] Imaging-based outcome prediction in patients with intracerebral hemorrhage
    Sporns, Peter B.
    Kemmling, Andre
    Minnerup, Jens
    Hanning, Uta
    Heindel, Walter
    ACTA NEUROCHIRURGICA, 2018, 160 (08) : 1663 - 1670
  • [24] A systematic review on intracranial aneurysm and hemorrhage detection using machine learning and deep learning techniques
    Ahmed, S. Nafees
    Prakasam, P.
    PROGRESS IN BIOPHYSICS & MOLECULAR BIOLOGY, 2023, 183 : 1 - 16
  • [25] Improving the Accuracy of Scores to Predict Gastrostomy after Intracerebral Hemorrhage with Machine Learning
    Garg, Ravi
    Prabhakaran, Shyam
    Holl, Jane L.
    Luo, Yuan
    Faigle, Roland
    Kording, Konrad
    Naidech, Andrew M.
    JOURNAL OF STROKE & CEREBROVASCULAR DISEASES, 2018, 27 (12): : 3570 - 3574
  • [26] Hematoma Expansion in Intracerebral Hemorrhage With Unclear Onset
    Morotti, Andrea
    Boulouis, Gregoire
    Charidimou, Andreas
    Li, Qi
    Poli, Loris
    Costa, Paolo
    De Giuli, Valeria
    Leuci, Eleonora
    Mazzacane, Federico
    Busto, Giorgio
    Arba, Francesco
    Brancaleoni, Laura
    Giacomozzi, Sebastiano
    Simonetti, Luigi
    Laudisi, Michele
    Micieli, Giuseppe
    Cavallini, Anna
    Candeloro, Elisa
    Gamba, Massimo
    Magoni, Mauro
    Warren, Andrew D.
    Anderson, Christopher D.
    Gurol, M. Edip
    Biffi, Alessandro
    Viswanathan, Anand
    Casetta, Ilaria
    Fainardi, Enrico
    Zini, Andrea
    Pezzini, Alessandro
    Padovani, Alessandro
    Greenberg, Steven M.
    Rosand, Jonathan
    Goldstein, Joshua N.
    NEUROLOGY, 2021, 96 (19) : E2363 - E2371
  • [27] Neoplastic and Non-neoplastic Acute Intracerebral Hemorrhage in CT Brain Scans: Machine Learning-Based Prediction Using Radiomic Image Features
    Nawabi, Jawed
    Kniep, Helge
    Kabiri, Reza
    Broocks, Gabriel
    Faizy, Tobias D.
    Thaler, Christian
    Schoen, Gerhard
    Fiehler, Jens
    Hanning, Uta
    FRONTIERS IN NEUROLOGY, 2020, 11
  • [28] Machine learning for predicting hematoma expansion in spontaneous intracerebral hemorrhage: a systematic review and meta-analysis
    Liu, Yihua
    Zhao, Fengfeng
    Niu, Enjing
    Chen, Liang
    NEURORADIOLOGY, 2024, 66 (09) : 1603 - 1616
  • [29] A Comparative Study of a Nomogram and Machine Learning Models in Predicting Early Hematoma Expansion in Hypertensive Intracerebral Hemorrhage
    Ye, Haoyi
    Jiang, Yang
    Wu, Zhihua
    Ruan, Yaoqin
    Shen, Chen
    Xu, Jiexiong
    Han, Wen
    Jiang, Ruixin
    Cai, Jinhui
    Liu, Zhifeng
    ACADEMIC RADIOLOGY, 2024, 31 (12) : 5130 - 5140
  • [30] Weakly supervised multitask learning models to identify symptom onset time of unclear-onset intracerebral hemorrhage
    Chang Jianbo
    Pei Hanqi
    Chen Yihao
    Jiang Cheng
    Shang Hong
    Wang Yuxiang
    Wang Xiaoning
    Ye Zeju
    Wang Xingong
    Tian Fengxuan
    Chai Jianjun
    Xu Jijun
    Li Zhaojian
    Ma Wenbin
    Wei Junji
    Jianhua Yao
    Feng Ming
    Wang Renzhi
    INTERNATIONAL JOURNAL OF STROKE, 2022, 17 (07) : 785 - 792