Lee Byungchul, Xu Lianji, Oh Sang-Ha, Ha Yooseok, Kwon Hyeokjae, Lee Kyu Cheol, Kim Soo Yeon, Seo Chang Wook, Kim Sunje, Song Seung Han
Department of Plastic and Reconstructive Surgery, Chungnam National University Hospital, Daejeon, South Korea.
Department of Plastic and Reconstructive Surgery, Beijing Tongren Hospital, Capital Medical University, Beijing, China.
PLoS One. 2025 Mar 25;20(3):e0319577. doi: 10.1371/journal.pone.0319577. eCollection 2025.
Ptosis surgery outcomes are measured by one-dimensional metrics like Marginal Reflex Distance (MRD) and Palpebral Fissure Height (PFH) using ImageJ. However, these methods are insufficient to capture the full range of changes post-surgery. Eyeball Exposure Rate (EER) offers a more comprehensive two-dimensional perspective as metric. This study compares AI-based EER measurements with conventional ImageJ methods for assessing outcome of ptosis surgery. Methods: Images from 50 patients (total 100 eyes) taken before and after surgery were analyzed using manual ImageJ and the AI-tool "Anigma-View". Statistical tests assessed the accuracy and consistency of both methods, using intraclass correlation coefficients (ICCs) and Bland-Altman plots for comparison.
EER measured by the AI-tool at pre- and post-operation were 58.85% and 75.36%, respectively. Similarly, manual measurements using ImageJ showed an increase from 58.22% to 75.27%. The Intraclass Correlation Coefficients (ICCs) between the AI-tool and manual measurements ranged from 0.984 to 0.994, indicating excellent agreement, with the repeated AI-tool demonstrating high reproducibility (ICC = 1). Bland-Altman plots showed excellent agreement between the two methods and reproducibility of AI-based measurements. Additionally, EER improvement was more prominent in the moderate to severe ptosis group with a 45.94% increase, compared to the mild group with 14.39% increase.
The findings revealed no significant differences between AI-tool and manual methods, suggesting that AI-tool is just as reliable. AI-tool to automate measurements offers efficiency and objectivity, making it a valuable method in clinical fields.
AI-based EER analysis is accurate and efficient, providing comparable results to manual methods. Its ability to simplify surgical outcome assessments makes it a promising addition to clinical practice. Further exploration of AI in evaluating three-dimensional changes in ptosis surgery could enhance future surgical assessments and outcomes.
上睑下垂手术效果通过使用ImageJ软件,依据诸如边缘反射距离(MRD)和睑裂高度(PFH)等一维指标来衡量。然而,这些方法不足以全面捕捉手术后的所有变化。眼球暴露率(EER)作为一种指标,提供了更全面的二维视角。本研究比较了基于人工智能的EER测量方法与传统的ImageJ方法在评估上睑下垂手术效果方面的差异。方法:对50例患者(共100只眼)手术前后拍摄的图像,分别使用手动ImageJ软件和人工智能工具“Anigma-View”进行分析。通过统计检验,使用组内相关系数(ICC)和Bland-Altman图进行比较,评估两种方法的准确性和一致性。
人工智能工具测量的术前和术后EER分别为58.85%和75.36%。同样,使用ImageJ软件的手动测量结果显示从58.22%增加到75.27%。人工智能工具测量结果与手动测量结果之间的组内相关系数(ICC)范围为0.984至0.994,表明一致性极佳,重复使用人工智能工具显示出高重现性(ICC = 1)。Bland-Altman图显示两种方法之间一致性极佳,且基于人工智能的测量具有重现性。此外,中重度上睑下垂组的EER改善更为显著,增加了45.94%,而轻度组增加了14.39%。
研究结果表明人工智能工具和手动方法之间没有显著差异,这表明人工智能工具同样可靠。人工智能工具实现测量自动化,具有高效性和客观性,使其成为临床领域一种有价值的方法。
基于人工智能的EER分析准确且高效,与手动方法的结果相当。其简化手术效果评估的能力使其成为临床实践中有前景的补充手段。进一步探索人工智能在评估上睑下垂手术三维变化方面的应用,可能会改善未来的手术评估和效果。