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一种用于辅助法医学自动文献综述的开源交互式人工智能框架:聚焦于脑损伤机制。

An open-source interactive AI framework for assisting automatic literature review in forensic medicine: Focus on brain injury mechanisms.

作者信息

Liu Ya-Wen, Zou Dong-Hua, Dong He-Wen, Liu Yuan-Yuan, Fu En-Hao, Tian Zhi-Ling, Liu Ning-Guo

机构信息

Academy of Forensic Science, Shanghai Key Laboratory of Forensics Medicine, Shanghai Forensic Service Platform, Key Laboratory of Forensic Medicine, Ministry of Justice, Shanghai, People's Republic of China.

School of Forensic Medicine, Shanxi Medical University, Jinzhong, Shanxi, People's Republic of China.

出版信息

PLoS One. 2025 Aug 1;20(8):e0329349. doi: 10.1371/journal.pone.0329349. eCollection 2025.

Abstract

BACKGROUND AND OBJECTIVE

Systematic reviews and meta-analyses are critical in forensic medicine; however, these processes are labor-intensive and time-consuming. ASReview, an open-source machine learning framework, has demonstrated potential to improve the efficiency and transparency of systematic reviews in other disciplines. Nevertheless, its applicability to forensic medicine remains unexplored. This study evaluates the utility of ASReview for forensic medical literature review.

METHODS

A three-stage experimental design was implemented. First, stratified five-fold cross-validation was conducted to assess ASReview's compatibility with forensic medical literature. Second, incremental learning and sampling methods were employed to analyze the model's performance on imbalanced datasets and the effect of training set size on predictive accuracy. Third, gold standard were translated into computational languages to evaluate ASReview's capacity to address real-world systematic review objectives.

RESULTS

ASReview exhibited robust viability for screening forensic medical literature. The tool efficiently prioritized relevant studies while excluding irrelevant records, thereby improving review productivity. Model performance remained stable when labeled training data constituted less than 80% of the total sample size. Notably, when the training set proportion ranged from 10% to 55%, ASReview's predictions aligned closely with human reviewer decisions.

CONCLUSION

ASReview represents a promising tool for forensic medical literature review. Its ability to handle imbalanced datasets and gather goal-oriented information enhances the efficiency and transparency of systematic reviews and meta-analyses in forensic medicine. Further research is required to optimize implementation strategies and validate its utility across diverse forensic medical contexts.

摘要

背景与目的

系统评价和荟萃分析在法医学中至关重要;然而,这些过程既耗费人力又耗时。ASReview作为一个开源机器学习框架,已在其他学科中展现出提高系统评价效率和透明度的潜力。尽管如此,其在法医学中的适用性仍未得到探索。本研究评估了ASReview在法医学文献综述中的效用。

方法

实施了一个三阶段实验设计。首先,进行分层五折交叉验证,以评估ASReview与法医学文献的兼容性。其次,采用增量学习和抽样方法,分析模型在不平衡数据集上的性能以及训练集大小对预测准确性的影响。第三,将金标准转化为计算语言,以评估ASReview实现实际系统评价目标的能力。

结果

ASReview在筛选法医学文献方面表现出强大的可行性。该工具在排除无关记录的同时,有效地对相关研究进行了优先级排序,从而提高了综述效率。当标记的训练数据占总样本量不到80%时,模型性能保持稳定。值得注意的是,当训练集比例在10%至55%之间时,ASReview的预测与人类评审员的决策密切一致。

结论

ASReview是法医学文献综述的一个有前景的工具。其处理不平衡数据集和收集目标导向信息的能力提高了法医学系统评价和荟萃分析的效率和透明度。需要进一步研究来优化实施策略,并在不同的法医学背景下验证其效用。

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