Author Affiliations: School of Nursing, Nanjing University of Chinese Medicine, Nanjing, Jiangsu Province, China (Ms Yang); Department of Obstetrics, Nanjing Drum Tower Hospital, Affiliated Hospital of Medical School, Nanjing University, Nanjing, Jiangsu Province, China (Mss Zhuang, Jiang, Fang, Li, Zhu and Zhao); and Department of Nursing, Nanjing Drum Tower Hospital, School of Clinical, College of Nanjing University of Chinese Medicine , Nanjing, Jiangsu Province, China (Ms Shi).
Adv Neonatal Care. 2024 Dec 1;24(6):578-585. doi: 10.1097/ANC.0000000000001205. Epub 2024 Oct 2.
Using Artificial Intelligence (AI) for neonatal pain assessment has great potential, but its effectiveness depends on accurate data labeling. Therefore, precise and reliable neonatal pain datasets are essential for managing neonatal pain.
To develop and validate a comprehensive multimodal dataset with accurately labeled clinical data, enhancing AI algorithms for neonatal pain assessment.
An assessment team randomly selected healthy neonates for assessment using the Neonatal Pain, Agitation, and Sedation Scale. During painful procedures, 2 cameras recorded neonates' pain reactions on site. After 2 weeks, assessors labeled the processed pain data on the EasyDL platform in a single-anonymized setting. The pain scores from the 4 single-modal data types were compared to the total pain scores derived from multimodal data. The On-Site Neonatal Pain Assessment completed using paper quality scales is referred to as OS-NPA, while the modality-data neonatal pain labeling performed using labeling software is MD-NPL.
The intraclass correlation coefficient among the 4 single-modal groups ranged from 0.938 to 0.969. The overall pain intraclass correlation coefficient score was 0.99, with a Kappa statistic for pain grade agreement of 0.899. The goodness-of-fit for the linear regression models comparing the OS-NPA and MD-NPL for each assessor was greater than 0.96.
MD-NPL represents a productive alternative to OS-NPA for neonatal pain assessment, and the validity of the data labels within the Multimodality Dataset for Neonatal Acute Pain has been validating. These findings offer reliable validation for algorithms designed to assess neonatal pain.
使用人工智能(AI)进行新生儿疼痛评估具有很大的潜力,但它的有效性取决于准确的数据标注。因此,精确和可靠的新生儿疼痛数据集对于管理新生儿疼痛至关重要。
开发和验证一个具有准确标注临床数据的综合多模态数据集,增强用于新生儿疼痛评估的 AI 算法。
评估小组随机选择健康的新生儿使用新生儿疼痛、躁动和镇静量表进行评估。在疼痛过程中,2 个摄像头现场记录新生儿的疼痛反应。2 周后,评估员在单个匿名设置下在 EasyDL 平台上对处理后的疼痛数据进行标注。从 4 种单模态数据类型获得的疼痛评分与从多模态数据中得出的总疼痛评分进行比较。使用纸质量表完成的现场新生儿疼痛评估称为 OS-NPA,而使用标注软件进行的多模态数据新生儿疼痛标注称为 MD-NPL。
4 个单模态组的组内相关系数范围为 0.938 到 0.969。总体疼痛组内相关系数评分为 0.99,疼痛等级一致性的 Kappa 统计量为 0.899。比较每位评估员的 OS-NPA 和 MD-NPL 的线性回归模型的拟合优度均大于 0.96。
MD-NPL 代表了新生儿疼痛评估的 OS-NPA 的有效替代方法,多模态新生儿急性疼痛数据集的数据标签的有效性已经得到验证。这些发现为设计用于评估新生儿疼痛的算法提供了可靠的验证。