TY - JOUR
T1 - Atom, atom-type and total molecular linear indices as a promising approach for bioorganic and medicinal chemistry
T2 - Theoretical and experimental assessment of a novel method for virtual screening and rational design of new lead anthelmintic
AU - Marrero-Ponce, Yovani
AU - Castillo-Garit, Juan A.
AU - Olazabal, Ervelio
AU - Serrano, Hector S.
AU - Morales, Alcidez
AU - Castañedo, Nilo
AU - Ibarra-Velarde, Froylán
AU - Huesca-Guillen, Alma
AU - Sánchez, Alicia M.
AU - Torrens, Francisco
AU - Castro, Eduardo A.
PY - 2005/2/15
Y1 - 2005/2/15
N2 - Helminth infections are a medical problem in the world nowadays. In this paper a novel atom-level chemical descriptor has been applied to estimate the anthelmintic activity. Total and local linear indices and linear discriminant analysis were used to obtain a quantitative model that discriminates between anthelmintic and non-anthelmintic drug-like compounds. The discriminant model has an accuracy of 90.11% in the training set, with a high Matthews' correlation coefficient (MCC = 0.80). To assess the robustness and predictive power of the obtained model, internal (leave-n-out) and external validation process was performed. The QSAR model correctly classified 88.55% of compounds in this external prediction set, yielding a MCC of 0.77. Another LDA model was carried out to outline some conclusions about the possible modes of action of anthelmintic drugs. It has an accuracy of 93.50% in the training set, and 80.00% in the external prediction set. After that, the developed model was used in the virtual-in silico-screening and several compounds from the Merck Index, Negwer's Handbook and Goodman and Gilman were identified by the model as anthelmintic. Finally, the experimental assay of an organic chemical (a furylethylene derivative) by an in vivo test permits us to carry out an assessment of the model. An accuracy of 100% with the theoretical predictions was observed. These results suggest that the proposed method will be a good tool for studying the biological properties of drug candidates during the early state of the drug-development process.
AB - Helminth infections are a medical problem in the world nowadays. In this paper a novel atom-level chemical descriptor has been applied to estimate the anthelmintic activity. Total and local linear indices and linear discriminant analysis were used to obtain a quantitative model that discriminates between anthelmintic and non-anthelmintic drug-like compounds. The discriminant model has an accuracy of 90.11% in the training set, with a high Matthews' correlation coefficient (MCC = 0.80). To assess the robustness and predictive power of the obtained model, internal (leave-n-out) and external validation process was performed. The QSAR model correctly classified 88.55% of compounds in this external prediction set, yielding a MCC of 0.77. Another LDA model was carried out to outline some conclusions about the possible modes of action of anthelmintic drugs. It has an accuracy of 93.50% in the training set, and 80.00% in the external prediction set. After that, the developed model was used in the virtual-in silico-screening and several compounds from the Merck Index, Negwer's Handbook and Goodman and Gilman were identified by the model as anthelmintic. Finally, the experimental assay of an organic chemical (a furylethylene derivative) by an in vivo test permits us to carry out an assessment of the model. An accuracy of 100% with the theoretical predictions was observed. These results suggest that the proposed method will be a good tool for studying the biological properties of drug candidates during the early state of the drug-development process.
KW - Anthelmintic activity
KW - QSAR
KW - Total and local linear indices
KW - Virtual screening
KW - tomocomd-cardd software
UR - http://www.scopus.com/inward/record.url?scp=19944434385&partnerID=8YFLogxK
U2 - 10.1016/j.bmc.2004.11.040
DO - 10.1016/j.bmc.2004.11.040
M3 - Artículo
C2 - 15670908
AN - SCOPUS:19944434385
SN - 0968-0896
VL - 13
SP - 1005
EP - 1020
JO - Bioorganic and Medicinal Chemistry
JF - Bioorganic and Medicinal Chemistry
IS - 4
ER -