AI Article Synopsis

  • About one-third of patients with spontaneous intracerebral hemorrhage don't know when their symptoms began, which limits research on time-sensitive treatments for these cases.
  • The study introduces an artificial intelligence model that uses weakly supervised multitask learning (WS-MTL) to estimate the onset time of symptoms from non-contrast CT scans, aiming to assist clinicians in treating unclear-onset patients.
  • With a dataset of 4004 patients and 10,780 CT scans, the WS-MTL model demonstrated high accuracy in classifications and satisfactory results in estimating onset time, suggesting it could be integrated into clinical practice for better treatment outcomes.

Article Abstract

Background: Approximately one-third of spontaneous intracerebral hemorrhage patients did not know the onset time and were excluded from studies about time-dependent treatments for hyperacute spontaneous intracerebral hemorrhage.

Aims: To help clinicians explore the benefit of time-dependent treatments for unclear-onset patients, we presented artificial intelligence models to identify onset time using non-contrast computed tomography (NCCT) based on weakly supervised multitask learning (WS-MTL) structure.

Methods: The patients with reliable symptom onset time (strong label) or repeat CT (weak label) were included and split into training set and test set (internal and external). The WS-MTL structure utilized strong and weak labels simultaneously to improve performance. The models included three binary classification models for classifying whether NCCT acquired within 6, 8 or 12 h for different treatments measured by area under curve, and a regression model for determining the exact onset time measured by mean absolute error. The generalizability of models was also explored in comprehensive analysis.

Results: A total of 4004 patients with 10,780 NCCT scans were included. The performance of WS-MTL classification model showed high accuracy, and that of regression model was satisfactory in ≤6 h subgroup. In comprehensive analysis, the WS-MTL showed better performance for larger hematomas and thinner scans. And the performance improved effectively as training amounts increasing and could be improved steadily through retraining.

Conclusions: The WS-MTL models showed good performance and generalizability. Considering the large number of unclear-onset spontaneous intracerebral hemorrhage patients, it may be worth to integrate the WS-MTL model into clinical practice to identify the onset time.

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Source
http://dx.doi.org/10.1177/17474930211051531DOI Listing

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