Parra Federico, Miljkovitch Raphaële, Persiaux Gwenaelle, Morales Michelle, Scherer Stefan
Institute for Creative Technologies, University of Southern California, Los Angeles, CA, United States.
Paragraphe Laboratory, Paris VIII University, Saint-Denis, France.
J Med Internet Res. 2017 Apr 6;19(4):e100. doi: 10.2196/jmir.6898.
Attachment theory has been proven essential for mental health, including psychopathology, development, and interpersonal relationships. Validated psychometric instruments to measure attachment abound but suffer from shortcomings common to traditional psychometrics. Recent developments in multimodal fusion and machine learning pave the way for new automated and objective psychometric instruments for adult attachment that combine psychophysiological, linguistic, and behavioral analyses in the assessment of the construct.
The aim of this study was to present a new exposure-based, automatic, and objective adult-attachment assessment, the Biometric Attachment Test (BAT), which exposes participants to a short standardized set of visual and music stimuli, whereas their immediate reactions and verbal responses, captured by several computer sense modalities, are automatically analyzed for scoring and classification. We also aimed to empirically validate two of its assumptions: its capacity to measure attachment security and the viability of using themes as placeholders for rotating stimuli.
A total of 59 French participants from the general population were assessed using the Adult Attachment Questionnaire (AAQ), the Adult Attachment Projective Picture System (AAP), and the Attachment Multiple Model Interview (AMMI) as ground truth for attachment security. They were then exposed to three different BAT stimuli sets, whereas their faces, voices, heart rate (HR), and electrodermal activity (EDA) were recorded. Psychophysiological features, such as skin-conductance response (SCR) and Bayevsky stress index; behavioral features, such as gaze and facial expressions; as well as linguistic and paralinguistic features, were automatically extracted. An exploratory analysis was conducted using correlation matrices to uncover the features that are most associated with attachment security. A confirmatory analysis was conducted by creating a single composite effects index and by testing it for correlations with attachment security. The stability of the theory-consistent features across three different stimuli sets was explored using repeated measures analysis of variances (ANOVAs).
In total, 46 theory-consistent correlations were found during the exploration (out of 65 total significant correlations). For example, attachment security as measured by the AAP was correlated with positive facial expressions (r=.36, P=.01). AMMI's security with the father was inversely correlated with the low frequency (LF) of HRV (r=-.87, P=.03). Attachment security to partners as measured by the AAQ was inversely correlated with anger facial expression (r=-.43, P=.001). The confirmatory analysis showed that the composite effects index was significantly correlated to security in the AAP (r=.26, P=.05) and the AAQ (r=.30, P=.04) but not in the AMMI. Repeated measures ANOVAs conducted individually on each of the theory-consistent features revealed that only 7 of the 46 (15%) features had significantly different values among responses to three different stimuli sets.
We were able to validate two of the instrument's core assumptions: its capacity to measure attachment security and the viability of using themes as placeholders for rotating stimuli. Future validation of other of its dimensions, as well as the ongoing development of its scoring and classification algorithms is discussed.
依恋理论已被证明对心理健康至关重要,包括精神病理学、发展以及人际关系等方面。用于测量依恋的经过验证的心理测量工具众多,但存在传统心理测量方法常见的缺点。多模态融合和机器学习的最新进展为新型自动化和客观的成人依恋心理测量工具铺平了道路,这些工具在评估该结构时结合了心理生理学、语言和行为分析。
本研究的目的是提出一种基于暴露的、自动且客观的成人依恋评估方法——生物特征依恋测试(BAT),该测试让参与者接触一组简短的标准化视觉和音乐刺激,同时通过多种计算机传感方式捕捉他们的即时反应和言语反应,并自动分析这些反应以进行评分和分类。我们还旨在通过实证验证其两个假设:其测量依恋安全性的能力以及使用主题作为旋转刺激的占位符的可行性。
总共59名来自法国普通人群的参与者使用成人依恋问卷(AAQ)、成人依恋投射图片系统(AAP)和依恋多模型访谈(AMMI)进行评估,将其作为依恋安全性的基本事实依据。然后让他们接触三种不同的BAT刺激集,同时记录他们的面部、声音、心率(HR)和皮肤电活动(EDA)。自动提取心理生理特征,如皮肤电导反应(SCR)和巴耶夫斯基压力指数;行为特征,如注视和面部表情;以及语言和副语言特征。使用相关矩阵进行探索性分析,以发现与依恋安全性最相关的特征。通过创建单个综合效应指数并测试其与依恋安全性的相关性进行验证性分析。使用重复测量方差分析(ANOVA)探索46个与理论一致的特征在三种不同刺激集下的稳定性。
在探索过程中总共发现了46个与理论一致的相关性(总共65个显著相关性)。例如,通过AAP测量的依恋安全性与积极的面部表情相关(r = 0.36,P = 0.01)。AMMI中与父亲的安全性与心率变异性(HRV)的低频(LF)呈负相关(r = -0.87,P = 0.03)。通过AAQ测量的对伴侣的依恋安全性与愤怒面部表情呈负相关(r = -0.43,P = 0.001)。验证性分析表明,综合效应指数与AAP中的安全性显著相关(r = 0.26,P = 0.05)和AAQ中的安全性显著相关(r = 0.30,P = 0.04),但与AMMI中的安全性不相关。对每个与理论一致的特征单独进行的重复测量方差分析表明,46个特征中只有7个(15%)在对三种不同刺激集的反应中有显著不同的值。
我们能够验证该工具的两个核心假设:其测量依恋安全性的能力以及使用主题作为旋转刺激的占位符的可行性。讨论了对其其他维度的未来验证以及其评分和分类算法的持续开发。