4.6 Article

Novel Survival Features Generated by Clinical Text Information and Radiomics Features May Improve the Prediction of Ischemic Stroke Outcome

期刊

DIAGNOSTICS
卷 12, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/diagnostics12071664

关键词

ischemic stroke outcome; clinical text information; radiomics features; survival features; machine learning

资金

  1. National Natural Science Foundation of China [62071311]
  2. Stable Support Plan for Colleges and Universities in Shenzhen of China [SZWD2021010]
  3. Scientific Research Fund of Liaoning Province of China [JL201919]
  4. special program for key fields of colleges and universities in Guangdong Province (biomedicine and health) of China [2021ZDZX2008]

向作者/读者索取更多资源

This study evaluated the performance of clinical text information, radiomics features, and survival features for predicting functional outcomes of ischemic stroke patients. The results show that combining these features can improve the prediction accuracy, but further validation on larger and more varied datasets is necessary.
Background: Accurate outcome prediction is of great clinical significance in customizing personalized treatment plans, reducing the situation of poor recovery, and objectively and accurately evaluating the treatment effect. This study intended to evaluate the performance of clinical text information (CTI), radiomics features, and survival features (SurvF) for predicting functional outcomes of patients with ischemic stroke. Methods: SurvF was constructed based on CTI and mRS radiomics features (mRSRF) to improve the prediction of the functional outcome in 3 months (90-day mRS). Ten machine learning models predicted functional outcomes in three situations (2-category, 4-category, and 7-category) using seven feature groups constructed by CTI, mRSRF, and SurvF. Results: For 2-category, ALL (CTI + mRSRF+ SurvF) performed best, with an mAUC of 0.884, mAcc of 0.864, mPre of 0.877, mF1 of 0.86, and mRecall of 0.864. For 4-category, ALL also achieved the best mAuc of 0.787, while CTI + SurvF achieved the best score with mAcc = 0.611, mPre = 0.622, mF1 = 0.595, and mRe-call = 0.611. For 7-category, CTI + SurvF performed best, with an mAuc of 0.788, mPre of 0.519, mAcc of 0.529, mF1 of 0.495, and mRecall of 0.47. Conclusions: The above results indicate that mRSRF + CTI can accurately predict functional outcomes in ischemic stroke patients with proper machine learning models. Moreover, combining SurvF will improve the prediction effect compared with the original features. However, limited by the small sample size, further validation on larger and more varied datasets is necessary.

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