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Machine learning enables automated screening for systematic reviews and meta-analysis in urology.
Menold, H S; Wieland, V L S; Haney, C M; Uysal, D; Wessels, F; Cacciamani, G C; Michel, M S; Seide, S; Kowalewski, K F.
Afiliação
  • Menold HS; Department of Urology and Urological Surgery, University Medical Center Mannheim, University of Heidelberg, Theodor-Kutzer-Ufer 1-3, 68167, Mannheim, Germany.
  • Wieland VLS; Department of Urology and Urological Surgery, University Medical Center Mannheim, University of Heidelberg, Theodor-Kutzer-Ufer 1-3, 68167, Mannheim, Germany.
  • Haney CM; Department of Urology, University of Leipzig, Leipzig, Germany.
  • Uysal D; Intelligent Systems and Robotics in Urology (ISRU), DKFZ Hector Cancer Institute at the University Medical Center Mannheim, Mannheim, Germany.
  • Wessels F; German Cancer Research Center (DKFZ), Heidelberg, Germany.
  • Cacciamani GC; Department of Urology and Urological Surgery, University Medical Center Mannheim, University of Heidelberg, Theodor-Kutzer-Ufer 1-3, 68167, Mannheim, Germany.
  • Michel MS; Department of Urology and Urological Surgery, University Medical Center Mannheim, University of Heidelberg, Theodor-Kutzer-Ufer 1-3, 68167, Mannheim, Germany.
  • Seide S; USC Institute of Urology, University of Southern California, ©, Los Angeles, CA, USA.
  • Kowalewski KF; Department of Urology and Urological Surgery, University Medical Center Mannheim, University of Heidelberg, Theodor-Kutzer-Ufer 1-3, 68167, Mannheim, Germany.
World J Urol ; 42(1): 396, 2024 Jul 10.
Article em En | MEDLINE | ID: mdl-38985296
ABSTRACT

PURPOSE:

To investigate and implement semiautomated screening for meta-analyses (MA) in urology under consideration of class imbalance.

METHODS:

Machine learning algorithms were trained on data from three MA with detailed information of the screening process. Different methods to account for class imbalance (Sampling (up- and downsampling, weighting and cost-sensitive learning), thresholding) were implemented in different machine learning (ML) algorithms (Random Forest, Logistic Regression with Elastic Net Regularization, Support Vector Machines). Models were optimized for sensitivity. Besides metrics such as specificity, receiver operating curves, total missed studies, and work saved over sampling were calculated.

RESULTS:

During training, models trained after downsampling achieved the best results consistently among all algorithms. Computing time ranged between 251 and 5834 s. However, when evaluated on the final test data set, the weighting approach performed best. In addition, thresholding helped to improve results as compared to the standard of 0.5. However, due to heterogeneity of results no clear recommendation can be made for a universal sample size. Misses of relevant studies were 0 for the optimized models except for one review.

CONCLUSION:

It will be necessary to design a holistic methodology that implements the presented methods in a practical manner, but also takes into account other algorithms and the most sophisticated methods for text preprocessing. In addition, the different methods of a cost-sensitive learning approach can be the subject of further investigations.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Urologia / Metanálise como Assunto / Aprendizado de Máquina / Revisões Sistemáticas como Assunto Limite: Humans Idioma: En Revista: World J Urol Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Alemanha

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Urologia / Metanálise como Assunto / Aprendizado de Máquina / Revisões Sistemáticas como Assunto Limite: Humans Idioma: En Revista: World J Urol Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Alemanha