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Figure/Table detail
Comparative effectiveness of AIGC detection tools in identifying AI⁃generated content within medical review abstracts
WANG Haijuan, SHEN Xibin, FEI Xiuyun, FU Hui, LI Peng, ZHAO Wei
Chinese Journal of Scientific and Technical Periodicals
, 2026, 37(
1
): 24-31. DOI:
10.11946/cjstp.202512261632
Figure 1
Distribution of abstract lengths in review articles published from 2018 to 2022
Other figure/table from this article
Table 1
Comparison of usage conditions and results presentation across 4 AIGC detection tools
Table 2
Descriptive statistics of detection scores from 4 AIGC detection tools across text groups
Table 3
Comparison of annotation accuracy among 4 AIGC detection tools
Figure 2
Analysis of consistency among the detection results of 3 domestically developed AIGC detection tools
Table 4
Sensitivity and specificity analysis of 4 AIGC detection tools