Nesnow S, Langenbach R, Mass M J
Environ Health Perspect. 1985 Sep;61:345-9. doi: 10.1289/ehp.8561345.
A set of 21 mutagenic aliphatic N-nitrosamines were subjected to a pattern recognition analysis using ADAPT software. Four descriptors based on molecular connectivity, geometry and sigma charge on nitrogen were capable of achieving a 100% classification using the linear learning machine or iterative least squares algorithms. Three descriptors were capable of a 90.5% and two descriptors of a 85.7% overall correct classification. Three of the four descriptors were each capable of classifying 15 of the 16 active chemicals while it required three of the four descriptors to classify correctly two of the five inactive chemicals. These results are in concert with previous observations that molecular connectivity, geometry, and sigma charge on nitrogen are powerful descriptors for separating active from inactive mutagenic and carcinogenic N-nitrosamines.
使用ADAPT软件对一组21种诱变脂肪族N-亚硝胺进行模式识别分析。基于分子连接性、几何结构和氮原子上的σ电荷的四个描述符,能够使用线性学习机或迭代最小二乘法算法实现100%的分类。三个描述符能够实现90.5%的总体正确分类,两个描述符能够实现85.7%的总体正确分类。四个描述符中的三个各自能够对16种活性化学物质中的15种进行分类,而对五种非活性化学物质中的两种进行正确分类则需要四个描述符中的三个。这些结果与之前的观察结果一致,即分子连接性、几何结构和氮原子上的σ电荷是区分活性与非活性诱变和致癌N-亚硝胺的有力描述符。