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Biomedical

Machine Learning assisted systematic reviewing in orthopaedics

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Bart G. Pijls

Bart G. Pijls


  Peer Reviewed

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© attribution CC-BY

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518 Views

Added on

2024-12-03

Doi: https://doi.org/10.1016/j.jor.2023.11.051

Related Subjects
Anatomy
Biochemistry
Epidemiology
Genetics
Neuroscience
Psychology
Oncology
Medicine
Musculoskeletal science
Pediatrics
Pathology
Pharmacology
Physiology
Psychiatry
Primary care
Women and reproductive health

Abstract

Background

Machine learning assisted systematic reviewing may help to reduce the work burden in systematic reviews. The aim of this study was to determine, through a non-developer, the performance of machine learning assisted systematic reviewing on previously published orthopaedic reviews in retrieving relevant papers.

Methods

Active learning for Systematic Reviews (ASReview) was tested against results from three previously published systematic reviews in orthopaedics, covering easy, intermediate, and advanced scenarios. Each review was tested with 20 iterations. Key outcomes were the percentage work saved at 95% recall (WSS@95), percentage work saved at 100% recall (WSS@100), and percentage of relevant references identified after screening the first 10% of records (RRF@10). Means and [95% confidence intervals] were calculated.

Results

The WSS@95 was 72 [71–74], 72 [72–73], and 50 [50–51] for easy, intermediate, and advanced scenarios, respectively. The WSS@100 was 72 [71–73], 62 [61–63], and 37 [36–38], respectively. The RRF@10 was 79 [78–81], 70 [69–71], and 58 [56–60] for easy, intermediate, and advanced scenarios, respectively.

Conclusions

Machine learning assisted systematic reviewing was efficient in retrieving relevant papers for orthopaedic reviews. The majority of relevant papers were identified after screening only 10% of the total papers. All relevant papers were identified after screening 30%–40%, potentially saving 60%–70% of the work.

Key Questions

1. What is the purpose of machine learning assisted systematic reviewing?

It aims to reduce the workload in systematic reviews by efficiently identifying relevant studies while maintaining high recall rates.

2. How effective was machine learning in orthopaedic systematic reviews?

In easy and intermediate scenarios, 72% of the workload was saved at 95% recall. Even in advanced scenarios, machine learning achieved substantial work savings of 50%–62%.

3. How quickly were relevant papers identified?

The majority of relevant papers were identified after screening only 10% of the total papers, making the process highly efficient.

4. What are the practical implications of this study?

Machine learning can significantly streamline the systematic review process, potentially saving 60%–70% of the screening workload while maintaining thoroughness and accuracy.

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ARTICLE USAGE


Article usage: Dec-2024 to May-2025
Show by month Manuscript Video Summary
2025 May 117 117
2025 April 81 81
2025 March 68 68
2025 February 120 120
2025 January 67 67
2024 December 65 65
Total 518 518
Show by month Manuscript Video Summary
2025 May 117 117
2025 April 81 81
2025 March 68 68
2025 February 120 120
2025 January 67 67
2024 December 65 65
Total 518 518
Related Subjects
Anatomy
Biochemistry
Epidemiology
Genetics
Neuroscience
Psychology
Oncology
Medicine
Musculoskeletal science
Pediatrics
Pathology
Pharmacology
Physiology
Psychiatry
Primary care
Women and reproductive health
copyright icon

© attribution CC-BY

  • 0

rating
518 Views

Added on

2024-12-03

Doi: https://doi.org/10.1016/j.jor.2023.11.051

Related Subjects
Anatomy
Biochemistry
Epidemiology
Genetics
Neuroscience
Psychology
Oncology
Medicine
Musculoskeletal science
Pediatrics
Pathology
Pharmacology
Physiology
Psychiatry
Primary care
Women and reproductive health

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