Delphi Client – Server Implementation of Multiple Linear Regression Findings: a QSAR/QSPR Application
نویسنده
چکیده
The paper describe the main problems concerning the creating of a client-server application using Borland Delphi environment which are used to find Quantitative Structure – Activity and Structure – Property Relationships using structure descriptors and measured activities/properties for molecules sets stored into a MySQL database server. The described application was used on a set of organic phosphorus herbicides and three new structure-property relationships were resulted and are proposed.
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