Selection of safe artemisinin derivatives using a machine learning-based cardiotoxicity platform and in vitro and in vivo validation

被引:9
作者
Kadioglu, Onat [1 ]
Klauck, Sabine M. [2 ]
Fleischer, Edmond [3 ]
Shan, Letian [4 ]
Efferth, Thomas [1 ]
机构
[1] Johannes Gutenberg Univ Mainz, Inst Pharmaceut & Biomed Sci, Dept Pharmaceut Biol, Staudinger Weg 5, D-55128 Mainz, Germany
[2] Natl Ctr Tumor Dis NCT, German Canc Res Ctr DKFZ, Div Canc Genome Res, German Canc Consortium DKTK, Heidelberg, Germany
[3] Fischer Organ GmbH, Weiler, Germany
[4] Zhejiang Chinese Med Univ, Affiliated Hosp 1, Hangzhou, Peoples R China
关键词
Artificial intelligence; Cardiotoxicity; Drug discovery; Machine learning; ANTIMALARIAL ARTEMISININ; DRUG-INTERACTIONS; CELL-DEATH; HERG; BLOCKING; ANNUA; MODES;
D O I
10.1007/s00204-021-03058-4
中图分类号
R99 [毒物学(毒理学)];
学科分类号
100405 ;
摘要
The majority of drug candidates fails the approval phase due to unwanted toxicities and side effects. Establishment of an effective toxicity prediction platform is of utmost importance, to increase the efficiency of the drug discovery process. For this purpose, we developed a toxicity prediction platform with machine-learning strategies. Cardiotoxicity prediction was performed by establishing a model with five parameters (arrhythmia, cardiac failure, heart block, hypertension, myocardial infarction) and additional toxicity predictions such as hepatotoxicity, reproductive toxicity, mutagenicity, and tumorigenicity are performed by using Data Warrior and Pro-Tox-II software. As a case study, we selected artemisinin derivatives to evaluate the platform and to provide a list of safe artemisinin derivatives. Artemisinin from Artemisia annua was described first as an anti-malarial compound and later its anticancer properties were discovered. Here, random forest feature selection algorithm was used for the establishment of cardiotoxicity models. High AUC scores above 0.830 were achieved for all five cardiotoxicity indications. Using a chemical library of 374 artemisinin derivatives as a case study, 7 compounds (deoxydihydro-artemisinin, 3-hydroxy-deoxy-dihydroartemisinin, 3-desoxy-dihydroartemisinin, dihydroartemisinin-furano acetate-d3, deoxyartemisinin, artemisinin G, artemisinin B) passed the toxicity filtering process for hepatotoxicity, mutagenicity, tumorigenicity, and reproductive toxicity in addition to cardiotoxicity. Experimental validation with the cardiomyocyte cell line AC16 supported the findings from the in silico cardiotoxicity model predictions. Transcriptomic profiling of AC16 cells upon artemisinin B treatment revealed a similar gene expression profile as that of the control compound, dexrazoxane. In vivo experiments with a Zebrafish model further substantiated the in silico and in vitro data, as only slight cardiotoxicity in picomolar range was observed. In conclusion, our machine-learning approach combined with in vitro and in vivo experimentation represents a suitable method to predict cardiotoxicity of drug candidates.
引用
收藏
页码:2485 / 2495
页数:11
相关论文
共 48 条
[1]   ProTox-II: a webserver for the prediction of toxicity of chemicals [J].
Banerjee, Priyanka ;
Eckert, Andreas O. ;
Schrey, Anna K. ;
Preissner, Robert .
NUCLEIC ACIDS RESEARCH, 2018, 46 (W1) :W257-W263
[2]   A human cardiomyocyte cell-line expressing hERG: An improved system for testing drug-associated hERG blocking and cardiotoxicity [J].
Bhat, Rakesh ;
Houghton, Michael .
JOURNAL OF PHARMACOLOGICAL AND TOXICOLOGICAL METHODS, 2018, 93 :114-114
[3]   Inroads to Predict in Vivo Toxicology-An Introduction to the eTOX Project [J].
Briggs, Katharine ;
Cases, Montserrat ;
Heard, David J. ;
Pastor, Manuel ;
Pognan, Francois ;
Sanz, Ferran ;
Schwab, Christof H. ;
Steger-Hartmann, Thomas ;
Sutter, Andreas ;
Watson, David K. ;
Wichard, Joerg D. .
INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2012, 13 (03) :3820-3846
[4]   In Silico Pharmacoepidemiologic Evaluation of Drug-Induced Cardiovascular Complications Using Combined Classifiers [J].
Cai, Chuipu ;
Fang, Jiansong ;
Guo, Pengfei ;
Wang, Qi ;
Hong, Huixiao ;
Moslehi, Javid ;
Cheng, Feixiong .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2018, 58 (05) :943-956
[5]   Carboplatin-induced hematotoxicity among patients with non-small cell lung cancer: Analysis on clinical adverse events and drug-gene interactions [J].
Cheng, Yi-ju ;
Wu, Ran ;
Cheng, Ming-liang ;
Du, Juan ;
Hu, Xi-wei ;
Yu, Lei ;
Zhao, Xue-ke ;
Yao, Yu-mei ;
Long, Qi-zhong ;
Zhu, Li-li ;
Zhu, Juan-juan ;
Huang, Ni-wen ;
Liu, Hua-juan ;
Hu, Ya-xin ;
Wan, Fang .
ONCOTARGET, 2017, 8 (19) :32228-32236
[6]   RGS4 Regulates Parasympathetic Signaling and Heart Rate Control in the Sinoatrial Node [J].
Cifelli, Carlo ;
Rose, Robert A. ;
Zhang, Hangjun ;
Voigtlaender-Bolz, Julia ;
Bolz, Steffen-Sebastian ;
Backx, Peter H. ;
Heximer, Scott P. .
CIRCULATION RESEARCH, 2008, 103 (05) :527-535
[7]   Modeling and Simulation Approaches for Cardiovascular Function and Their Role in Safety Assessment [J].
Collins, T. A. ;
Bergenholm, L. ;
Abdulla, T. ;
Yates, J. W. T. ;
Evans, N. ;
Chappell, M. J. ;
Mettetal, J. T. .
CPT-PHARMACOMETRICS & SYSTEMS PHARMACOLOGY, 2015, 4 (03) :175-188
[8]  
Demsar J, 2013, J MACH LEARN RES, V14, P2349
[9]  
Efferth T, 2002, EUR J CANCER, V38, pS99
[10]   The antiviral activities of artemisinin and artesunate [J].
Efferth, Thomas ;
Romero, Marta R. ;
Wolf, Dana G. ;
Stamminger, Thomas ;
Marin, Jose J. G. ;
Marschall, Manfred .
CLINICAL INFECTIOUS DISEASES, 2008, 47 (06) :804-811