The promising research on Artificial Intelligence usages in suicide prevention has principal gaps, including black box methodologies, inadequate outcome measures, and scarce research on non-verbal inputs, such as social media images (despite their popularity today, in our digital era). This study addresses these gaps and combines theory-driven and bottom-up strategies to construct a hybrid and interpretable prediction model of valid suicide risk from images. The lead hypothesis was that images contain valuable information about emotions and interpersonal relationships, two central concepts in suicide-related treatments and theories. The dataset included 177,220 images by 841 Facebook users who completed a gold-standard suicide scale. The images were represented with CLIP, a state-of-the-art algorithm, which was utilized, unconventionally, to extract predefined features that served as inputs to a simple logistic-regression prediction model (in contrast to complex neural networks). The features addressed basic and theory-driven visual elements using everyday language (e.g., bright photo, photo of sad people). The results of the hybrid model (that integrated theory-driven and bottom-up methods) indicated high prediction performance that surpassed common bottom-up algorithms, thus providing a first proof that images (alone) can be leveraged to predict validated suicide risk. Corresponding with the lead hypothesis, at-risk users had images with increased negative emotions and decreased belonginess. The results are discussed in the context of non-verbal warning signs of suicide. Notably, the study illustrates the advantages of hybrid models in such complicated tasks and provides simple and flexible prediction strategies that could be utilized to develop real-life monitoring tools of suicide.
翻译:对人工智能在预防自杀方面的用法进行有希望的研究存在主要差距,其中包括黑盒方法、成果计量不足、对非口头投入的研究很少,例如社交媒体图像(尽管今天在数字时代受到欢迎)等。这项研究解决了这些差距,并结合了理论驱动和自下而上的战略,以构建一个对图像产生的有效自杀风险的混合和可解释的预测模型。主要假设是图像包含关于情感和人际关系的宝贵信息,这是自杀治疗和理论的两个核心概念。数据集包括了由841个完成黄金自杀规模的Facebook用户制作的177 220张图像。图像以CLIP为代表,这是最新的算法,非常规地用来提取预设的特征,作为简单的后勤反向预测模型(与复杂的神经网络相比)的投入。这些特征涉及使用日常语言的基本和理论驱动的视觉要素(如光照、悲伤患者的照片)。混合模型的结果(该综合理论驱动和自下而上而起的策略)显示了高水平的预估性表现。因此,在普通的自杀风险分析中,使用一种普通的预估风险分析结果,因此,可以使用一种普通的预估结果。