Department of Psychiatry, Sorbonne Université, Hôpital Saint Antoine- APHP, Paris, France.
Infrastructure of Clinical Research In Neurosciences- Psychiatry, Brain and Spine Institute (ICM), Inserm UMRS 1127, Centre national de la recherche scientifique, Sorbonne Université, Paris, France.
J Med Internet Res. 2021 Sep 30;23(9):e24560. doi: 10.2196/24560.
Recently, artificial intelligence technologies and machine learning methods have offered attractive prospects to design and manage crisis response processes, especially in suicide crisis management. In other domains, most algorithms are based on big data to help diagnose and suggest rational treatment options in medicine. But data in psychiatry are related to behavior and clinical evaluation. They are more heterogeneous, less objective, and incomplete compared to other fields of medicine. Consequently, the use of psychiatric clinical data may lead to less accurate and sometimes impossible-to-build algorithms and provide inefficient digital tools. In this case, the Bayesian network (BN) might be helpful and accurate when constructed from expert knowledge. Medical Companion is a government-funded smartphone application based on repeated questions posed to the subject and algorithm-matched advice to prevent relapse of suicide attempts within several months.
Our paper aims to present our development of a BN algorithm as a medical device in accordance with the American Psychiatric Association digital healthcare guidelines and to provide results from a preclinical phase.
The experts are psychiatrists working in university hospitals who are experienced and trained in managing suicidal crises. As recommended when building a BN, we divided the process into 2 tasks. Task 1 is structure determination, representing the qualitative part of the BN. The factors were chosen for their known and demonstrated link with suicidal risk in the literature (clinical, behavioral, and psychometrics) and therapeutic accuracy (advice). Task 2 is parameter elicitation, with the conditional probabilities corresponding to the quantitative part. The 4-step simulation (use case) process allowed us to ensure that the advice was adapted to the clinical states of patients and the context.
For task 1, in this formative part, we defined clinical questions related to the mental state of the patients, and we proposed specific factors related to the questions. Subsequently, we suggested specific advice related to the patient's state. We obtained a structure for the BN with a graphical representation of causal relations between variables. For task 2, several runs of simulations confirmed the a priori model of experts regarding mental state, refining the precision of our model. Moreover, we noticed that the advice had the same distribution as the previous state and was clinically relevant. After 2 rounds of simulation, the experts found the exact match.
BN is an efficient methodology to build an algorithm for a digital assistant dedicated to suicidal crisis management. Digital psychiatry is an emerging field, but it needs validation and testing before being used with patients. Similar to psychotropics, any medical device requires a phase II (preclinical) trial. With this method, we propose another step to respond to the American Psychiatric Association guidelines.
ClinicalTrials.gov NCT03975881; https://clinicaltrials.gov/ct2/show/NCT03975881.
最近,人工智能技术和机器学习方法为设计和管理危机应对流程提供了有吸引力的前景,尤其是在自杀危机管理方面。在其他领域,大多数算法都是基于大数据来帮助诊断并提供合理的治疗选择。但是,精神病学的数据与行为和临床评估有关。与其他医学领域相比,它们更具异质性、更不客观、更不完整。因此,使用精神病学临床数据可能会导致算法不够准确,有时甚至无法构建,并提供效率低下的数字工具。在这种情况下,当从专家知识中构建时,贝叶斯网络(BN)可能是有用且准确的。Medical Companion 是一款政府资助的智能手机应用程序,它基于向对象重复提问,并根据算法匹配建议,以防止在几个月内再次自杀。
我们的论文旨在根据美国精神病学协会的数字医疗保健指南展示我们开发 BN 算法作为医疗器械的过程,并提供临床前阶段的结果。
专家是在大学医院工作的经验丰富且接受过管理自杀危机培训的精神科医生。正如在构建 BN 时所建议的,我们将该过程分为 2 个任务。任务 1 是结构确定,代表 BN 的定性部分。选择这些因素是因为它们在文献中已知并证明与自杀风险有关(临床、行为和心理计量学)以及治疗准确性(建议)。任务 2 是参数引出,对应于定量部分的条件概率。我们使用 4 步模拟(用例)过程确保建议适应患者的临床状态和环境。
对于任务 1,在这个形成性部分,我们定义了与患者精神状态相关的临床问题,并提出了与问题相关的特定因素。随后,我们提出了与患者状态相关的具体建议。我们获得了 BN 的结构,具有变量之间因果关系的图形表示。对于任务 2,多次模拟运行证实了专家对精神状态的先验模型,从而提高了我们模型的精度。此外,我们注意到建议具有与前一状态相同的分布,并且具有临床相关性。经过两轮模拟,专家们找到了完全匹配的结果。
BN 是构建专门用于自杀危机管理的数字助理算法的有效方法。数字精神病学是一个新兴领域,但在用于患者之前需要验证和测试。与精神药物一样,任何医疗设备都需要进行 II 期(临床前)试验。通过这种方法,我们提出了另一个步骤来响应美国精神病学协会的指南。
ClinicalTrials.gov NCT03975881; https://clinicaltrials.gov/ct2/show/NCT03975881.