QSAR

QSAR
  • 文章类型: Journal Article
    液晶单体(LCM)是一类新的新兴污染物,具有高的辛醇-水分配系数;然而,它们的转化行为和对高有机质含量环境的相关风险很少报道。在这项研究中,我们研究了光降解动力学,机制,和23个LCM在叶蜡模型上的毒性变化(例如,有机溶剂甲醇和正己烷)。在模拟阳光下,这些LCMs的光解速率顺序为联苯乙炔LCMs>苯甲酸苯酯LCMs>二苯基/三联苯LCMs,而苯基环己烷LCM对光降解具有抗性。苯甲酸苯酯和联苯乙炔LCMs主要进行直接光解,而二苯基/三联苯LCM主要进行自敏化光解。主要的光解途径是苯甲酸苯酯LCMs的酯键断裂,加法,联苯乙炔LCM的炔基氧化和裂解,以及与苯基连接的链的裂解/氧化和二苯基/三联苯LCM的苯环打开。大多数光解产物在某种程度上对水生生物仍然有毒。此外,建立了两种定量构效关系模型,用于预测LCMs在甲醇和正己烷中的kobs,并用于预测93个LCM的kobs,以填补模仿叶片表面的系统中的kobs数据空白。这些结果有助于评估LCM在高有机相含量环境中的命运和风险。
    Liquid crystal monomers (LCMs) are a new class of emerging pollutants with high octanol-water partition coefficients; however, their transformation behavior and associated risk to environments with high organic matter content has rarely been reported. In this study, we investigated the photodegradation kinetics, mechanism, and toxicity variation of 23 LCMs on leaf wax models (e.g., organic solvents methanol and n-hexane). The order of the photolysis rates of these LCMs were biphenylethyne LCMs > phenylbenzoate LCMs > diphenyl/terphenyl LCMs under simulated sunlight, while the phenylcyclohexane LCMs were resistant to photodegradation. The phenylbenzoate and biphenylethyne LCMs mainly undergo direct photolysis, while the diphenyl/terphenyl LCMs mainly undergo self-sensitized photolysis. The main photolysis pathways are the cleavage of ester bonds for phenylbenzoate LCMs, the addition, oxidation and cleavage of alkynyl groups for biphenylethyne LCMs, and the cleavage/oxidation of chains attached to phenyls and the benzene ring opening for diphenyl/terphenyls LCMs. Most photolysis products remained toxic to aquatic organisms to some degree. Additionally, two quantitative structure-activity relationship models for predicting kobs of LCMs in methanol and n-hexane were developed, and employed to predict kobs of 93 LCMs to fill the kobs data gap in systems mimicking leaf surfaces. These results can be helpful for evaluating the fate and risk of LCMs in environments with high content of organic phase.
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  • 文章类型: Journal Article
    新合成的7-氯-4-氨基喹啉-苯并咪唑杂化物通过NMR和元素分析进行了表征。测试了化合物对非肿瘤细胞系MRC-5(人胎儿肺成纤维细胞)和癌(HeLa和CaCo-2)的生长的影响,白血病,和淋巴瘤(Hut78,THP-1和HL-60)细胞系。所获得的结果,表示为达到50%细胞生长抑制的浓度(IC50值),显示受试化合物影响细胞生长不同,取决于细胞系和应用剂量(IC50范围为0.2至>100µM)。此外,针对两种恶性疟原虫菌株(Pf3D7和PfDd2)评估了这些杂种的抗疟原虫活性。测试的化合物显示出有效的抗疟原虫活性,对抗这两种菌株,在纳摩尔浓度。定量结构-活性关系(QSAR)分析产生了针对恶性疟原虫的3D7菌株(R2=0.886;Rext2=0.937;F=41.589)和Dd2菌株(R2=0.859;Rext2=0.878;F=32.525)的抗疟原虫活性的预测模型。QSAR模型确定了这些对疟原虫活性有利作用的结构特征。
    Newly synthesized 7-chloro-4-aminoquinoline-benzimidazole hybrids were characterized by NMR and elemental analysis. Compounds were tested for their effects on the growth of the non-tumor cell line MRC-5 (human fetal lung fibroblasts) and carcinoma (HeLa and CaCo-2), leukemia, and lymphoma (Hut78, THP-1, and HL-60) cell lines. The obtained results, expressed as the concentration at which 50% inhibition of cell growth is achieved (IC50 value), show that the tested compounds affect cell growth differently depending on the cell line and the applied dose (IC50 ranged from 0.2 to >100 µM). Also, the antiplasmodial activity of these hybrids was evaluated against two P. falciparum strains (Pf3D7 and PfDd2). The tested compounds showed potent antiplasmodial activity, against both strains, at nanomolar concentrations. Quantitative structure-activity relationship (QSAR) analysis resulted in predictive models for antiplasmodial activity against the 3D7 strain (R2 = 0.886; Rext2 = 0.937; F = 41.589) and Dd2 strain (R2 = 0.859; Rext2 = 0.878; F = 32.525) of P. falciparum. QSAR models identified the structural features of these favorable effects on antiplasmodial activities.
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  • 文章类型: Journal Article
    溶剂化和包封水敏分子的需求推动了环糊精在制药工业中应用的显著趋势。在食物中,聚合物,材料,和农业科学。其中,β-环糊精是最常用于包封酚酸化合物以掩盖麦麸的苦味的物质之一。在这方面,仍然需要良好的数据,尤其是评估β-环糊精对各种酚类化合物的苦味掩蔽能力的稳健预测模型。本研究使用对接到β-环糊精腔中的20种酚酸的数据集来产生三种不同的结合常数。对接研究的数据与拓扑相结合,地形,以及基于机器学习的结构-活性关系研究中配体的量子化学特征。使用遗传算法(GA)和多元线性回归(MLR)方法的组合计算每种结合常数的三种不同模型。开发的ML/QSAR模型表现出很好的性能,训练集和测试集具有很高的预测能力和0.969和0.984的相关系数,分别。模型揭示了与环糊精结合的几个因素,显示对结合亲和力值的正贡献,包括分子中存在六元环的特征,分支,电负性值,和极性表面积。
    The need to solvate and encapsulate hydro-sensitive molecules drives noticeable trends in the applications of cyclodextrins in the pharmaceutical industry, in foods, polymers, materials, and in agricultural science. Among them, β-cyclodextrin is one of the most used for the entrapment of phenolic acid compounds to mask the bitterness of wheat bran. In this regard, there is still a need for good data and especially for a robust predictive model that assesses the bitterness masking capabilities of β-cyclodextrin for various phenolic compounds. This study uses a dataset of 20 phenolic acids docked into the β-cyclodextrin cavity to generate three different binding constants. The data from the docking study were combined with topological, topographical, and quantum-chemical features from the ligands in a machine learning-based structure-activity relationship study. Three different models for each binding constant were computed using a combination of the genetic algorithm (GA) and multiple linear regression (MLR) approaches. The developed ML/QSAR models showed a very good performance, with high predictive ability and correlation coefficients of 0.969 and 0.984 for the training and test sets, respectively. The models revealed several factors responsible for binding with cyclodextrin, showing positive contributions toward the binding affinity values, including such features as the presence of six-membered rings in the molecule, branching, electronegativity values, and polar surface area.
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  • 文章类型: Journal Article
    由于多种因素,通过基于药物的治疗或涉及化合物的联合治疗方案靶向癌细胞可能具有挑战性。包括它们对生物活性化合物的抗性和药物损害健康细胞的潜力。本研究旨在探讨新型含硫紫草素肟化合物的结构与对四种癌症类型的细胞毒性之间的关系。即结肠,胃,肝脏,和乳腺癌,通过计算化学工具。这项研究被认为有助于深入了解化合物的结构如何影响其活性,并了解其背后的机制,随后可用于多种癌症药物设计过程,以提出可能表现出所需活性的新型优化化合物。研究结果表明,通过搜索和机器学习算法的组合,对四种癌症类型的细胞毒性活性是准确预测的(R2>0.7,NRMSE<20%),根据有关化合物结构的信息,包括它们的亲脂性,表面积,和音量。总的来说,这项研究应该在癌症研究领域有效的多种癌症药物设计中发挥关键作用。
    Targeting cancer cells through drug-based treatment or combination therapy protocols involving chemical compounds can be challenging due to multiple factors, including their resistance to bioactive compounds and the potential of drugs to damage healthy cells. This study aims to investigate the relationship between the structure of novel sulfur-containing shikonin oxime compounds and the corresponding cytotoxicity against four cancer types, namely colon, gastric, liver, and breast cancers, through computational chemistry tools. This investigation is suggested to help build insights into how the structure of the compounds influences their activity and understand the mechanisms behind it and subsequently might be used in multi-cancer drug design process to propose novel optimized compounds that potentially exhibit the desired activity. The findings showed that the cytotoxic activity against the four cancer types was accurately predictable (R2 > 0.7, NRMSE <20%) by a combination of search and machine learning algorithms, based on the information on the structure of the compounds, including their lipophilicity, surface area, and volume. Overall, this study is supposed to play a crucial role in effective multi-cancer drug design in cancer research areas.
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  • 文章类型: Journal Article
    ADME(吸收,Distribution,代谢,排泄)特性是判断候选药物是否表现出期望的药代动力学(PK)概况的关键参数。在这项研究中,我们测试了多任务机器学习(ML)模型,以预测在勃林格氏英格尔海姆生成的内部数据上训练的ADME和动物PK终点。在化合物的设计阶段都对模型进行了评估(i。Procedures.,没有可用的测试化合物的实验数据),并且在进行特定测定的测试阶段(i。Procedures.,早期进行的测定的实验数据可能是可用的)。使用现实的时间分割,我们发现,与单任务模型相比,基于多任务图的神经网络模型在性能上有明显的优势,当早期测定的实验数据可用时,这一点甚至更强。为了解释多任务模型的成功,我们发现,尤其是数据点数量最多的端点(物理化学端点,微粒体中的清除率)导致更复杂的ADME和PK终点的预测性增加。总之,我们的研究深入了解了如何最好地利用制药公司多个ADME/PK终点的数据来优化ML模型的预测性.
    ADME (Absorption, Distribution, Metabolism, Excretion) properties are key parameters to judge whether a drug candidate exhibits a desired pharmacokinetic (PK) profile. In this study, we tested multi-task machine learning (ML) models to predict ADME and animal PK endpoints trained on in-house data generated at Boehringer Ingelheim. Models were evaluated both at the design stage of a compound (i. e., no experimental data of test compounds available) and at testing stage when a particular assay would be conducted (i. e., experimental data of earlier conducted assays may be available). Using realistic time-splits, we found a clear benefit in performance of multi-task graph-based neural network models over single-task model, which was even stronger when experimental data of earlier assays is available. In an attempt to explain the success of multi-task models, we found that especially endpoints with the largest numbers of data points (physicochemical endpoints, clearance in microsomes) are responsible for increased predictivity in more complex ADME and PK endpoints. In summary, our study provides insight into how data for multiple ADME/PK endpoints in a pharmaceutical company can be best leveraged to optimize predictivity of ML models.
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  • 文章类型: Journal Article
    开发了一种完全绿色的方案,用于在超声辐照和无溶剂条件下,在N-乙基乙醇胺(NEEA)作为催化剂的存在下合成一系列芳基氨基萘酚衍生物。这种方法的主要资产是使用无毒的有机介质,可用的催化剂,温和的反应条件,以及所需产品的良好至优异收率。使用DPPH筛选了所有合成产物的体外抗氧化活性,ABTS,和铁-菲咯啉测定,发现它们中的大多数是有效的抗氧化剂。此外,它们的丁酰胆碱酯酶抑制活性已在体外进行了研究。与标准参考药物加兰他敏相比,所有测试化合物均对BuChE表现出潜在的抑制活性,然而,化合物4r,4u,4g和4x产生更高的丁酰胆碱酯酶抑制作用,IC50值为14.78±0.65µM,16.18±0.50µM,20.00±0.50µM,和20.28±0.08µM。另一方面,我们采用密度泛函理论(DFT),分析分子几何形状和全局反应性描述符的计算,和MESP分析来预测亲电和亲核攻击。对25个芳氨基萘酚衍生物的抗氧化和丁酰胆碱酯酶特性进行了定量构效关系(QSAR)研究,产生稳健和令人满意的模型。为了评估他们的抗阿尔茨海默氏症活性,化合物4g,4q,4r,4u,并在乙酰胆碱酯酶(AChE)和丁酰胆碱酯酶(BChE)的活性位点进行了4x对接模拟,揭示了为什么这些化合物表现出优异的活性,与生物学结果一致。
    A completely green protocol was developed for the synthesis of a series of arylaminonaphthol derivatives in the presence of N-ethylethanolamine (NEEA) as a catalyst under ultrasonic irradiation and solventless conditions. The major assets of this methodology were the use of non-toxic organic medium, available catalyst, mild reaction condition, and good to excellent yield of desired products. All of the synthesized products were screened for their in vitro antioxidant activity using DPPH, ABTS, and Ferric-phenanthroline assays and it was found that most of them are potent antioxidant agents. Also, their butyrylcholinesterase inhibitory activity has been investigated in vitro. All tested compounds exhibited potential inhibitory activity toward BuChE when compared to standard reference drug galantamine, however, compounds 4r, 4u, 4 g and 4x gave higher butyrylcholinesterase inhibitory with IC50 values of 14.78 ± 0.65 µM, 16.18 ± 0.50 µM, 20.00 ± 0.50 µM, and 20.28 ± 0.08 µM respectively. On the other hand, we employed density functional theory (DFT), calculations to analyze molecular geometry and global reactivity descriptors, and MESP analysis to predict electrophilic and nucleophilic attacks. A quantitative structure-activity relationship (QSAR) investigation was conducted on the antioxidant and butyrylcholinesterase properties of 25 arylaminonaphthol derivatives, resulting in robust and satisfactory models. To evaluate their anti-Alzheimer\'s activity, compounds 4 g, 4q, 4r, 4u, and 4x underwent docking simulations at the active site of the acetylcholinesterase (AChE) and butyrylcholinesterase (BChE), revealing why these compounds displayed superior activity, consistent with the biological findings.
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  • 文章类型: Journal Article
    心血管疾病是一种高死亡率的慢性炎症性疾病。TNF-α是促炎的,与疾病有关,但是目前的药物有副作用。因此,迫切需要有效的抑制剂作为替代品。这项研究代表了TNF-α的结构-活性关系研究,从ChEMBL数据库中筛选。进行探索性数据分析以可视化不同生物活性基团的物理化学性质。提取的分子进行PubChem和SubStructure指纹图谱,并使用WEKA工具生成基于QSAR的随机森林(QSAR-RF)模型。QSAR随机森林模型是基于SubStructure指纹建立的,相关系数为0.992和0.716作为各自的十倍交叉验证分数。使用方差重要图(VIP)方法提取TNF-α抑制的重要特征。使用来自PubChem和ZINC数据库的分子验证基于子结构的QSAR-RF(SS-QSAR-RF)模型。生成的模型还预测了从对接研究中选择的分子的pIC50值,然后进行了时间步长为100ns的分子动力学模拟。通过虚拟反向药理学,我们从通过分子对接研究获得的前四个命中化合物中确定了主要的药物靶标。我们的分析包括一种综合的生物信息学方法来确定像EGRF这样的关键目标,HSP900A1、STAT3、PSEN1、AKT1和MDM2。Further,GO和KEGG通路分析确定了与hub基因相关的心血管疾病相关通路。然而,这项研究提供了有价值的见解,重要的是要注意,它缺乏实验应用。未来的研究可能会受益于进行体外和体内研究。
    Cardiovascular disease is a chronic inflammatory disease with high mortality rates. TNF-alpha is pro-inflammatory and associated with the disease, but current medications have adverse effects. Therefore, efficient inhibitors are urgently needed as alternatives. This study represents a structural-activity relationship investigation of TNF-alpha, curated from the ChEMBL database. Exploratory data analysis was performed to visualize the physicochemical properties of different bioactivity groups. The extracted molecules were subjected to PubChem and SubStructure fingerprints, and a QSAR-based Random Forest (QSAR-RF) model was generated using the WEKA tool. The QSAR random Forest model was built based on the SubStructure fingerprint with a correlation coefficient of 0.992 and 0.716 as the respective tenfold cross-validation scores. The variance important plot (VIP) method was used to extract the important features for TNF-alpha inhibition. The Substructure-based QSAR-RF (SS-QSAR-RF) model was validated using molecules from PubChem and ZINC databases. The generated model also predicts the pIC50 value of the molecules selected from the docking study followed by molecular dynamic simulation with the time step of 100 ns. Through virtual reverse pharmacology, we determined the main drug targets from the top four hit compounds obtained via molecular docking study. Our analysis included an integrated bioinformatics approach to pinpoint crucial targets like EGRF, HSP900A1, STAT3, PSEN1, AKT1, and MDM2. Further, GO and KEGG pathways analysis identified relevant cardiovascular disease-related pathways for the hub gene involved. However, this study provides valuable insights, it is important to note that it lacks experimental application. Future research may benefit from conducting in-vitro and in-vivo studies.
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  • 文章类型: Journal Article
    牛奶是生物活性肽的重要膳食来源,给个人带来显著的好处。在胃肠道消化产生的抗氧化短肽(二肽和三肽)中,其特征是生物利用度和生物可及性增强,而单独评估它们提出了一个劳动密集型和昂贵的挑战。基于4种不同类型的氨基酸描述符(物理化学,三维结构,量子,和拓扑属性)和用于特征选择的遗传算法,图1和4的机器学习预测模型分别针对具有ABTS自由基清除能力的二肽和三肽表现出优异的拟合和预测能力,以随机森林回归作为机器学习算法。有趣的是,N端氨基酸的电子性质被认为是影响含有酪氨酸和色氨酸的二肽抗氧化能力的唯一因素。来自潜在二肽和三肽的四种肽通过构建的预测模型表现出高度预测值。随后,在体外模拟消化过程中,通过定制的工作流程在山羊奶中总共筛选了45个二肽和52个三肽。除了已知的5种抗氧化二肽,在消化过程中对9种肽进行了定量,落在0.04至1.78mgL-1的范围内。特别值得注意的是具有N-末端酪氨酸的抗氧化二肽的有前途的体内功能,由计算机模拟分析支持。总的来说,这项研究探索了影响抗氧化短肽的关键分子特性,并通过机器学习从羊奶中高通量筛选具有抗氧化活性的潜在肽,从而促进从乳源蛋白质中鉴定新型生物活性肽,并为理解其消化过程中的代谢物铺平了道路。
    Milk serves as an important dietary source of bioactive peptides, offering notable benefits to individuals. Among the antioxidant short peptides (di- and tripeptides) generated from gastrointestinal digestion are characterized by enhanced bioavailability and bioaccessibility, while assessing them individually presents a labor-intensive and expensive challenge. Based on 4 distinct types of amino acid descriptors (physicochemical, 3D structural, quantum, and topological attributes) and genetic algorithms for feature selection, 1 and 4 machine learning predicted models separately for di- and tripeptides with ABTS radical scavenging capacity exhibited excellent fitting and prediction ability with random forest regression as machine learning algorithm. Intriguingly, the electronic properties of N-terminal amino acid were considered as only factor affecting the antioxidant capacity of dipeptides containing both tyrosine and tryptophan. Four peptides from the potential di- and tripeptides exhibited highly predicted values by the constructed predicted models. Subsequently, a total of 45 dipeptides and 52 tripeptides were screened by a customized workflow in goat milk during in vitro simulated digestion. In addition to 5 known antioxidant dipeptides, 9 peptides were quantified during digestion, falling within the range of 0.04 to 1.78 mg L-1. Particularly noteworthy was the promising in vivo functionality of antioxidant dipeptides with N-terminal tyrosine, supported by in silico assays. Overall, this investigation explored crucial molecular properties influencing antioxidant short peptides and high-throughput screening potential peptides with antioxidant activity from goat milk aided by machine learning, thereby facilitating the identification of novel bioactive peptides from milk-derived proteins and paving the way for understanding their metabolites during digestion.
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  • 文章类型: Journal Article
    设计了一系列新的噻唑烷-2,4-二酮系链的1,2,3-三唑衍生物,采用体外和计算机模拟方法合成并筛选了它们的α-淀粉酶抑制潜力。目的化合物是借助Cu(I)催化的末端炔与许多叠氮化物的[32]环加成合成的。然后通过采用各种光谱方法明确表征结构。评估合成衍生物的体外α-淀粉酶抑制作用,发现噻唑烷-2,4-二酮衍生物6e,6j,6o,6u和6x表现出与标准药物阿卡波糖相当的抑制作用。在三唑环上具有7-氯喹啉基取代基的化合物6e表现出显著的抑制潜力,IC50值为0.040μmol·mL-1,而化合物6c(IC50=0.099μmol·mL-1)和6h(IC50=0.098μmol·mL-1)是差的抑制剂。QSAR研究揭示了有助于设计新型化合物的正相关描述符。进行分子对接以研究与生物受体活性位点的结合相互作用,并使用分子动力学研究检查了复合物在100ns期间的稳定性。通过进行ADMET研究,研究了有效衍生物的理化性质和药物相似行为。
    A new series of thiazolidine-2,4-dione tethered 1,2,3-triazole derivatives were designed, synthesized and screened for their α-amylase inhibitory potential employing in vitro and in silico approaches. The target compounds were synthesized with the help of Cu (I) catalyzed [3 + 2] cycloaddition of terminal alkyne with numerous azides, followed by unambiguously characterizing the structure by employing various spectroscopic approaches. The synthesized derivatives were assessed for their in vitro α-amylase inhibition and it was found that thiazolidine-2,4-dione derivatives 6e, 6j, 6o, 6u and 6x exhibited comparable inhibition with the standard drug acarbose. The compound 6e with a 7-chloroquinolinyl substituent on the triazole ring exhibited significant inhibition potential with IC50 value of 0.040 μmol mL-1 whereas compound 6c (IC50 = 0.099 μmol mL-1) and 6h (IC50 = 0.098 μmol mL-1) were poor inhibitors. QSAR studies revealed the positively correlating descriptors that aid in the design of novel compounds. Molecular docking was performed to investigate the binding interactions with the active site of the biological receptor and the stability of the complex over a period of 100 ns was examined using molecular dynamics studies. The physiochemical properties and drug-likeliness behavior of the potent derivatives were investigated by carrying out the ADMET studies.
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  • 文章类型: Journal Article
    众所周知,药物的肝毒性可以显着影响其临床使用。尽管它们有效的治疗效果,由于严重的肝毒性,许多药物在临床应用中受到严重限制。作为回应,研究人员已经创建了几个基于机器学习的肝毒性预测模型,用于药物发现和开发。研究人员旨在预测药物的潜在肝毒性以增强其效用。然而,目前的肝毒性预测模型往往无法得到验证,它们无法捕获预测的肝毒性化合物的详细毒理学结构。以栀子的56种化学成分为例,我们通过文献综述验证了训练后的肝毒性预测模型,主成分分析(PCA),和结构比较方法。最终,我们成功开发了一个具有强大预测性能的模型,并进行了视觉验证。有趣的是,我们发现,栀子的预测肝毒性化学成分具有毒性和治疗作用,可能是剂量依赖性的。这一发现极大地有助于我们对药物诱导的肝毒性的双重性质的理解。
    It is well-known that the hepatotoxicity of drugs can significantly influence their clinical use. Despite their effective therapeutic efficacy, many drugs are severely limited in clinical applications due to significant hepatotoxicity. In response, researchers have created several machine learning-based hepatotoxicity prediction models for use in drug discovery and development. Researchers aim to predict the potential hepatotoxicity of drugs to enhance their utility. However, current hepatotoxicity prediction models often suffer from being unverified, and they fail to capture the detailed toxicological structures of predicted hepatotoxic compounds. Using the 56 chemical constituents of Gardenia jasminoides as examples, we validated the trained hepatotoxicity prediction model through literature reviews, principal component analysis (PCA), and structural comparison methods. Ultimately, we successfully developed a model with strong predictive performance and conducted visual validation. Interestingly, we discovered that the predicted hepatotoxic chemical constituents of Gardenia possess both toxic and therapeutic effects, which are likely dose-dependent. This discovery greatly contributes to our understanding of the dual nature of drug-induced hepatotoxicity.
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