Stuart Samuel, Hickey Aodhán, Galna Brook, Lord Sue, Rochester Lynn, Godfrey Alan
Physiol Meas. 2017 Jan;38(1):N16-N31. doi: 10.1088/1361-6579/38/1/N16. Epub 2016 Dec 12.
Detection of saccades (fast eye-movements) within raw mobile electrooculography (EOG) data involves complex algorithms which typically process data acquired during seated static tasks only. Processing of data during dynamic tasks such as walking is relatively rare and complex, particularly in older adults or people with Parkinson's disease (PD). Development of algorithms that can be easily implemented to detect saccades is required. This study aimed to develop an algorithm for the detection and measurement of saccades in EOG data during static (sitting) and dynamic (walking) tasks, in older adults and PD. Eye-tracking via mobile EOG and infra-red (IR) eye-tracker (with video) was performed with a group of older adults (n = 10) and PD participants (n = 10) (⩾50 years). Horizontal saccades made between targets set 5°, 10° and 15° apart were first measured while seated. Horizontal saccades were then measured while a participant walked and executed a 40° turn left and right. The EOG algorithm was evaluated by comparing the number of correct saccade detections and agreement (ICC) between output from visual inspection of eye-tracker videos and IR eye-tracker. The EOG algorithm detected 75-92% of saccades compared to video inspection and IR output during static testing, with fair to excellent agreement (ICC 0.49-0.93). However, during walking EOG saccade detection reduced to 42-88% compared to video inspection or IR output, with poor to excellent (ICC 0.13-0.88) agreement between methodologies. The algorithm was robust during seated testing but less so during walking, which was likely due to increased measurement and analysis error with a dynamic task. Future studies may consider a combination of EOG and IR for comprehensive measurement.
在原始的移动眼电图(EOG)数据中检测扫视(快速眼动)涉及复杂的算法,这些算法通常仅处理在坐姿静态任务期间采集的数据。在诸如行走等动态任务期间处理数据相对较少且复杂,尤其是在老年人或帕金森病(PD)患者中。需要开发能够易于实现以检测扫视的算法。本研究旨在开发一种算法,用于检测和测量老年人及PD患者在静态(坐姿)和动态(行走)任务期间EOG数据中的扫视。通过移动EOG和红外(IR)眼动追踪仪(带视频)对一组老年人(n = 10)和PD参与者(n = 10)(年龄⩾50岁)进行眼动追踪。首先在坐姿时测量相隔5°、10°和15°设置的目标之间的水平扫视。然后在参与者行走并向左和向右转40°时测量水平扫视。通过比较眼动追踪仪视频的目视检查输出与IR眼动追踪仪之间正确扫视检测的数量和一致性(ICC)来评估EOG算法。在静态测试期间,与视频检查和IR输出相比,EOG算法检测到75 - 92%的扫视,一致性为中等至优秀(ICC 0.49 - 0.93)。然而,在行走期间,与视频检查或IR输出相比,EOG扫视检测降至42 - 88%,方法之间的一致性为差至优秀(ICC 0.13 - 0.88)。该算法在坐姿测试期间稳健,但在行走期间则不然,这可能是由于动态任务中测量和分析误差增加所致。未来的研究可能会考虑将EOG和IR结合起来进行全面测量。