Starke Georg, D'Imperio Ambra, Ienca Marcello
Faculty of Medicine, Institute for History and Ethics of Medicine, Technical University of Munich, Munich, Germany.
École Polytechnique Fédérale de Lausanne, College of Humanities, Lausanne, Switzerland.
Front Psychiatry. 2023 Aug 24;14:1209862. doi: 10.3389/fpsyt.2023.1209862. eCollection 2023.
Harnessing the power of machine learning (ML) and other Artificial Intelligence (AI) techniques promises substantial improvements across forensic psychiatry, supposedly offering more objective evaluations and predictions. However, AI-based predictions about future violent behaviour and criminal recidivism pose ethical challenges that require careful deliberation due to their social and legal significance. In this paper, we shed light on these challenges by considering externalist accounts of psychiatric disorders which stress that the presentation and development of psychiatric disorders is intricately entangled with their outward environment and social circumstances. We argue that any use of predictive AI in forensic psychiatry should not be limited to neurobiology alone but must also consider social and environmental factors. This thesis has practical implications for the design of predictive AI systems, especially regarding the collection and processing of training data, the selection of ML methods, and the determination of their explainability requirements.
利用机器学习(ML)和其他人工智能(AI)技术有望在法医精神病学领域带来实质性的改进,据称能提供更客观的评估和预测。然而,基于AI对未来暴力行为和犯罪再犯的预测带来了伦理挑战,鉴于其社会和法律意义,需要仔细斟酌。在本文中,我们通过考虑精神病学障碍的外在主义解释来阐明这些挑战,这种解释强调精神病学障碍的表现和发展与其外部环境和社会状况错综复杂地交织在一起。我们认为,在法医精神病学中对预测性AI的任何使用都不应仅限于神经生物学,还必须考虑社会和环境因素。这一论点对预测性AI系统的设计具有实际意义,特别是在训练数据的收集和处理、ML方法的选择以及可解释性要求的确定方面。