Seghier Mohamed L, Price Cathy J
Department of Biomedical Engineering, Khalifa University of Science and Technology, Abu Dhabi, UAE.
Healthcare Engineering Innovation Center (HEIC), Khalifa University of Science and Technology, Abu Dhabi, UAE.
Brain Commun. 2023 Jun 5;5(3):fcad178. doi: 10.1093/braincomms/fcad178. eCollection 2023.
This paper considers the steps needed to generate pragmatic and interpretable lesion-symptom mappings that can be used for clinically reliable prognoses. The novel contributions are 3-fold. We first define and inter-relate five neurobiological and five methodological constraints that need to be accounted for when interpreting lesion-symptom associations and generating synthetic lesion data. The first implication is that, because of these constraints, lesion-symptom mapping needs to focus on probabilistic relationships between Lesion and Symptom, with Lesion as a multivariate spatial pattern, Symptom as a time-dependent behavioural profile and evidence that Lesion raises the probability of Symptom. The second implication is that in order to assess the strength of probabilistic causality, we need to distinguish between causal lesion sites, incidental lesion sites, spared but dysfunctional sites and intact sites, all of which might affect the accuracy of the predictions and prognoses generated. We then formulate lesion-symptom mappings in logical notations, including combinatorial rules, that are then used to evaluate and better understand complex brain-behaviour relationships. The logical and theoretical framework presented applies to any type of neurological disorder but is primarily discussed in relationship to stroke damage. Accommodating the identified constraints, we discuss how the 1965 Bradford Hill criteria for inferring probabilistic causality, , from observed correlations in epidemiology-can be applied to lesion-symptom mapping in stroke survivors. Finally, we propose that rather than rely on evaluation of how well the causality criteria have been met, the neurobiological and methodological constraints should be addressed, , by changing the experimental design of lesion-symptom mappings and setting up an open platform to share and validate the discovery of reliable and accurate lesion rules that are clinically useful.
本文探讨了生成实用且可解释的损伤-症状映射所需的步骤,这些映射可用于临床可靠的预后评估。本文有三个新颖的贡献。我们首先定义并相互关联五个神经生物学和五个方法学约束条件,在解释损伤-症状关联和生成合成损伤数据时需要考虑这些条件。第一个启示是,由于这些约束条件,损伤-症状映射需要关注损伤与症状之间的概率关系,其中损伤是一个多变量空间模式,症状是一个随时间变化的行为特征,并且有证据表明损伤增加了症状出现的概率。第二个启示是,为了评估概率因果关系的强度,我们需要区分因果损伤部位、偶然损伤部位、虽未受损但功能失调的部位和未受损部位,所有这些部位都可能影响所生成预测和预后的准确性。然后,我们用逻辑符号(包括组合规则)来表述损伤-症状映射,这些规则随后用于评估和更好地理解复杂的脑-行为关系。所提出的逻辑和理论框架适用于任何类型的神经系统疾病,但主要结合中风损伤进行讨论。考虑到已确定的约束条件,我们讨论了1965年布拉德福德·希尔从流行病学观察到的相关性中推断概率因果关系的标准如何应用于中风幸存者的损伤-症状映射。最后,我们建议,与其依赖对因果关系标准满足程度的评估,不如通过改变损伤-症状映射的实验设计并建立一个开放平台来解决神经生物学和方法学约束条件,以分享和验证对临床有用的可靠且准确的损伤规则的发现。