Ruppin E, Reggia J A
Dept. of Computer Science, School of Mathematics, Tel-Aviv University, Ramat-Aviv, Israel.
Neural Comput. 1995 Sep;7(5):1105-27. doi: 10.1162/neco.1995.7.5.1105.
Current understanding of the effects of damage on neural networks is rudimentary, even though such understanding could lead to important insights concerning neurological and psychiatric disorders. Motivated by this consideration, we present a simple analytical framework for estimating the functional damage resulting from focal structural lesions to a neural network model. The effects of focal lesions of varying area, shape, and number on the retrieval capacities of a spatially organized associative memory are quantified, leading to specific scaling laws that may be further examined experimentally. It is predicted that multiple focal lesions will impair performance more than a single lesion of the same size, that slit like lesions are more damaging than rounder lesions, and that the same fraction of damage (relative to the total network size) will result in significantly less performance decrease in larger networks. Our study is clinically motivated by the observation that in multi-infarct dementia, the size of metabolically impaired tissue correlates with the level of cognitive impairment more than the size of structural damage. Our results account for the detrimental effect of the number of infarcts rather than their overall size or structural damage, and for the "multiplicative" interaction between Alzheimer's disease and multi-infarct dementia.
目前对于损伤对神经网络影响的理解还很初步,尽管这种理解可能会为神经和精神疾病带来重要的见解。出于这一考虑,我们提出了一个简单的分析框架,用于估计神经网络模型中局灶性结构损伤所导致的功能损伤。量化了不同面积、形状和数量的局灶性损伤对空间组织联想记忆检索能力的影响,得出了可能有待进一步实验检验的特定缩放定律。据预测,多个局灶性损伤比相同大小的单个损伤对性能的损害更大,狭长形损伤比圆形损伤更具破坏性,并且相同比例的损伤(相对于总网络大小)在较大网络中导致的性能下降显著更小。我们的研究受到临床上一个观察结果的推动,即在多发性梗死性痴呆中,代谢受损组织的大小与认知障碍程度的相关性比结构损伤的大小更强。我们的结果解释了梗死灶数量而非其总体大小或结构损伤的有害影响,以及阿尔茨海默病与多发性梗死性痴呆之间的“相乘”相互作用。