Sarmet Max, Kaczmarek Elska, Fauveau Alexane, Steer Kendall, Velasco Alex-Ann, Smith Ani, Kennedy Maressa, Shideler Hannah, Wallace Skyler, Stroud Thomas, Blilie Morgan, Mayerl Christopher J
Department of Biological Sciences, Northern Arizona University, Flagstaff, AZ, 86011, USA.
Graduate Department of Health Science and Technology, University of Brasilia, Brasilia, 70910-900, Brazil.
Dysphagia. 2025 Apr 28. doi: 10.1007/s00455-025-10829-z.
Feeding efficiency and safety are often driven by bolus volume, which is one of the most common clinical measures of assessing swallow performance. However, manual measurement of bolus area is time-consuming and suffers from high levels of inter-rater variability. This study proposes a machine learning (ML) pipeline using ilastik, an accessible bioimage analysis tool, to automate the measurement of bolus area during swallowing. The pipeline was tested on 336 swallows from videofluoroscopic recordings of 8 infant pigs during bottle feeding. Eight trained raters manually measured bolus area in ImageJ and also used ilastik's autocontext pixel-level labeling and object classification tools to train ML models for automated bolus segmentation and area calculation. The ML pipeline trained in 1h42min and processed the dataset in 2 min 48s, a 97% time saving compared to manual methods. The model exhibited strong performance, achieving a high Dice Similarity Coefficient (0.84), Intersection over Union (0.76), and inter-rater reliability (intraclass correlation coefficient = 0.79). The bolus areas from the two methods were highly correlated (R² = 0.74 overall, 0.78 without bubbles, 0.67 with bubbles), with no significant difference in measured bolus area between the methods. Our ML pipeline, requiring no ML expertise, offers a reliable and efficient method for automatically measuring bolus area. While human confirmation remains valuable, this pipeline accelerates analysis and improves reproducibility compared to manual methods. Future refinements can further enhance precision and broaden its application in dysphagia research.
喂食效率和安全性通常由食团体积驱动,食团体积是评估吞咽性能最常见的临床指标之一。然而,手动测量食团面积既耗时,评分者间的变异性又很高。本研究提出了一种使用ilastik(一种易于使用的生物图像分析工具)的机器学习(ML)流程,以实现吞咽过程中食团面积测量的自动化。该流程在8只幼猪奶瓶喂养的视频荧光透视记录中的336次吞咽上进行了测试。8名经过培训的评分者在ImageJ中手动测量食团面积,并使用ilastik的自动上下文像素级标记和对象分类工具来训练用于自动食团分割和面积计算的ML模型。ML流程在1小时42分钟内完成训练,并在2分48秒内处理数据集,与手动方法相比节省了97%的时间。该模型表现出强大的性能,获得了较高的骰子相似系数(0.84)、交并比(0.76)和评分者间可靠性(组内相关系数=0.79)。两种方法测得的食团面积高度相关(总体R² = 0.74,无气泡时为0.78,有气泡时为0.67),两种方法测得的食团面积无显著差异。我们的ML流程无需ML专业知识,提供了一种可靠且高效的自动测量食团面积的方法。虽然人工确认仍然很有价值,但与手动方法相比,该流程加快了分析速度并提高了可重复性。未来的改进可以进一步提高精度,并扩大其在吞咽困难研究中的应用。