scholarly journals Modeling Polypharmacy Side Effects with Graph Convolutional Networks

2018 ◽  
Author(s):  
Marinka Zitnik ◽  
Monica Agrawal ◽  
Jure Leskovec

AbstractMotivation: The use of drug combinations, termed polypharmacy, is common to treat patients with complex diseases or co-existing conditions. However, a major consequence of polypharmacy is a much higher risk of adverse side effects for the patient. Polypharmacy side effects emerge because of drug-drug interactions, in which activity of one drug may change, favorably or unfavorably, if taken with another drug. The knowledge of drug interactions is often limited because these complex relationships are rare, and are usually not observed in relatively small clinical testing. Discovering polypharmacy side effects thus remains an important challenge with significant implications for patient mortality and morbidity.Results: Here, we present Decagon, an approach for modeling polypharmacy side effects. The approach constructs a multimodal graph of protein-protein interactions, drug-protein target interactions, and the polypharmacy side effects, which are represented as drug-drug interactions, where each side effect is an edge of a different type. Decagon is developed specifically to handle such multimodal graphs with a large number of edge types. Our approach develops a new graph convolutional neural network for multirelational link prediction in multimodal networks. Unlike approaches limited to predicting simple drug-drug interaction values, Decagon can predict the exact side effect, if any, through which a given drug combination manifests clinically. Decagon accurately predicts polypharmacy side effects, outperforming baselines by up to 69%. We find that it automatically learns representations of side effects indicative of co-occurrence of polypharmacy in patients. Furthermore, Decagon models particularly well polypharmacy side effects that have a strong molecular basis, while on predominantly non-molecular side effects, it achieves good performance because of effective sharing of model parameters across edge types. Decagon opens up opportunities to use large pharmacogenomic and patient population data to flag and prioritize polypharmacy side effects for follow-up analysis via formal pharmacological studies.Availability: Source code and preprocessed datasets are at: http://snap.stanford.edu/decagon.Contact:[email protected]

2020 ◽  
Vol 2020 ◽  
pp. 1-10 ◽  
Author(s):  
Sukyung Seo ◽  
Taekeon Lee ◽  
Mi-hyun Kim ◽  
Youngmi Yoon

Identifying the potential side effects of drugs is crucial in clinical trials in the pharmaceutical industry. The existing side effect prediction methods mainly focus on the chemical and biological properties of drugs. This study proposes a method that uses diverse information such as drug-drug interactions from DrugBank, drug-drug interactions from network, single nucleotide polymorphisms, and side effect anatomical hierarchy as well as chemical structures, indications, and targets. The proposed method is based on the assumption that properties used in drug repositioning studies could be utilized to predict side effects because the phenotypic expression of a side effect is similar to that of the disease. The prediction results using the proposed method showed a 3.5% improvement in the area under the curve (AUC) over that obtained when only chemical, indication, and target features were used. The random forest model delivered outstanding results for all combinations of feature types. Finally, after identifying candidate side effects of drugs using the proposed method, the following four popular drugs were discussed: (1) dasatinib, (2) sitagliptin, (3) vorinostat, and (4) clonidine.


2021 ◽  
pp. 51-52
Author(s):  
Anita Pathak

Unsafe abortion is important and preventable cause of maternal mortality and morbidity. Medical method of abortion is a safe efcient and affordable method of abortion. However incomplete abortion is known side effect. An insight into the referral practices in cases of incomplete abortion following medical method of abortion will give an idea of the safety prole of medical methods of abortion. 150 women with incomplete abortion following medical method of abortion were administered a questionnaire which included information regarding onset of bleeding, treatment received, use of medication for abortion, its prescription, and administration. 90% of incomplete abortion following medical method of abortion were due to self-administration or prescription by unregistered practitioners, lack of examinations and lack of follow up. Complications such as collapse, blood requirement and fever were signicantly higher in these patients. The side effects of incomplete abortion following medical method of abortion can be minimized by following the standard guidelines.


2020 ◽  
Author(s):  
Irfan Aygün ◽  
Mehmet Kaya ◽  
Reda Alhajj

Abstract To increase the success in Covid 19 treatment, many drug suggestions are presented, and some clinical studies are shared in the literature. There have been some attempts to use some of these drugs in combination. However, using more than one drug together may cause serious side effects on patients. Therefore, detecting drug-drug interactions of the drugs used will be of great importance in the treatment of Covid 19. In this study, the interactions of 8 drugs used for Covid 19 treatment with 645 different drugs and possible side effects estimates have been produced using Graph Convolutional Networks. Organ systems and diseases in which these 8 drugs cause the most negative effects have been identified. In addition, as it is known that some of these 8 drugs are used together in Covid-19 treatment, the side effects caused by using these drugs together are shared. With the experimental results obtained, it is aimed to facilitate the selection of the drugs and increase the success of Covid 19 treatment according to the targeted patient.


2020 ◽  
Vol 10 (1) ◽  
Author(s):  
İrfan Aygün ◽  
Mehmet Kaya ◽  
Reda Alhajj

AbstractTo increase the success in Covid 19 treatment, many drug suggestions are presented, and some clinical studies are shared in the literature. There have been some attempts to use some of these drugs in combination. However, using more than one drug together may cause serious side effects on patients. Therefore, detecting drug-drug interactions of the drugs used will be of great importance in the treatment of Covid 19. In this study, the interactions of 8 drugs used for Covid 19 treatment with 645 different drugs and possible side effects estimates have been produced using Graph Convolutional Networks. As a result of the experiments, it has been found that the hematopoietic system and the cardiovascular system are exposed to more side effects than other organs. Among the focused drugs, Heparin and Atazanavir appear to cause more adverse reactions than other drugs. In addition, as it is known that some of these 8 drugs are used together in Covid-19 treatment, the side effects caused by using these drugs together are shared. With the experimental results obtained, it is aimed to facilitate the selection of the drugs and increase the success of Covid 19 treatment according to the targeted patient.


2018 ◽  
Vol 3 (2) ◽  
pp. 48
Author(s):  
Bahare Dadgari

In the United States, the prevalence and incidence of epilepsy are about 5 to 8.4 per 1000 and 35.5 to 71 per 100,000 persons per year, respectively. Epilepsy management is a personalized and multifactorial medical approach; it is based on the type of epilepsy syndrome, severity and frequency of epileptic seizures, antiepileptic drug’s (AED) side effects, drug-drug interactions, disease-related psychosocial problems, and the overall lifestyle of the patient. Aggressive behavior is a major side effect of many AEDs. It deteriorates patients’ health. In this study, we reviewed different mechanisms of aggression in patients with or without epilepsy, and eventually, we introduced medications that potentially managed both.


2019 ◽  
Author(s):  
Hannah A. Burkhardt ◽  
Devika Subramanian ◽  
Justin Mower ◽  
Trevor Cohen

AbstractThe identification of drug-drug interactions (DDIs) is important for patient safety; yet, compared to other pharmacovigilance work, a limited amount of research has been conducted in this space. Recent work has successfully applied a method of deriving distributed vector representations from structured biomedical knowledge, known as Embedding of Semantic Predications (ESP), to the problem of predicting individual drug side effects. In the current paper we extend this work by applying ESP to the problem of predicting polypharmacy side-effects for particular drug combinations, building on a recent reconceptualization of this problem as a network of drug nodes connected by side effect edges. We evaluate ESP embeddings derived from the resulting graph on a side-effect prediction task against a previously reported graph convolutional neural network approach, using the same data and evaluation methods. We demonstrate that ESP models perform better, while being faster to train, more re-usable, and significantly simpler.


Author(s):  
Radhey Shyam ◽  
Arpita Singh ◽  
Dheeraj Kumar Singh ◽  
Ajay Kumar Verma ◽  
Pratap Shankar ◽  
...  

Background: In the modern era, AIDS is not less than a disaster for the human race. More than two-third of HIV-infected individuals have an associated infectious pulmonary disease. Mycobacterium tuberculosis is more virulent than most of other opportunistic pathogen causing latent infection. HIV is characterized by a profound immunodeficiency resulting from a progressive, quantitative and qualitative deficiency of the subset of CD4 T lymphocytes referred to as helper T cells leading to the patient at high risk of developing a variety of opportunistic infections. At present AIDS is incurable but some of the drugs have shown to decrease the mortality and morbidity of the disease. These are called as Highly Active Anti-Retroviral Therapy (HAART). However, these drugs are associated with a significant number of side effects. This work has been conducted in order to study the demographic profile of HIV patients with TB and monitor the adverse effects of different HAART regimens among them.Methods: A total of 3078 patients screened for the study. Those who were diagnosed with HIV were enrolled. Pretreatment parameters like, CD4, CD8 + lymphocyte count and their ratio, haemogram etc. were recorded. Patients were divided into four groups and were started with different HAART regimens. They were monitored regularly for the appearance of any adverse effects.Results: The prevalence of HIV sero-positivity was found to be 3.60%. Out of them, 71.18% were males and 28.82% were females. The highest prevalence (43.29%) was in the age group of 21-50 years. The sero-positive rate was found more in married males as compared to married females and unmarried cases. Side effects were present in all the groups. The most common side effect was GI intolerance and was most frequent in Group I. Anemia and neutropenia occurred in the Zidovudine containing groups (group I, III and IV). Peripheral neuropathy occurred most commonly in cases of Group II. Rashes occurred in nevirapine containing groups. Liver function derangement was noticed more in group I and II. 71.4% of patients on HAART regimen showed improvement in symptoms while 28.57% did not show any improvement.Conclusions: The prevalence of HIV sero-positivity in our study was 3.60%. The rate of sero-positivity was more in males as compared to females while it was highest in the individuals of 21-50 years of age. The most common side effect was GI intolerance and was most frequent in Group I. Anemia and neutropenia occurred most frequently in Zidovudine containing groups. Peripheral neuropathy occurred most commonly in cases of Group II (Stavudine + Lamivudine + Nevirapine). Deranged lipid profile was found to occur due to indinavir in patients of Group IV. After starting on HAART regimens, 74.4% showed significant improvement in symptoms.


Phlebologie ◽  
2004 ◽  
Vol 33 (06) ◽  
pp. 202-205 ◽  
Author(s):  
K. Hartmann ◽  
S. Nagel ◽  
T. Erichsen ◽  
E. Rabe ◽  
K. H. Grips ◽  
...  

SummaryHydroxyurea (HU) is usually a well tolerated antineoplastic agent and is commonly used in the treatment of chronic myeloproliferative diseases. Dermatological side effects are frequently seen in patients receiving longterm HU therapy. Cutaneous ulcers have been reported occasionally.We report on four patients with cutaneous ulcers whilst on long-term hydroxyurea therapy for myeloproliferative diseases. In all patients we were able to reduce the dose, or stop HU altogether and their ulcers markedly improved. Our observations suggest that cutaneous ulcers should be considered as possible side effect of long-term HU therapy and healing of the ulcers can be achieved not only by cessation of the HU treatment, but also by reducing the dose of hydroxyurea for a limited time.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Mona Dietrichkeit ◽  
Marion Hagemann-Goebel ◽  
Yvonne Nestoriuc ◽  
Steffen Moritz ◽  
Lena Jelinek

AbstractAlthough awareness of side effects over the course of psychotherapy is growing, side effects are still not always reported. The purpose of the present study was to examine side effects in a randomized controlled trial comparing Metacognitive Training for Depression (D-MCT) and a cognitive remediation training in patients with depression. 84 patients were randomized to receive either D-MCT or cognitive remediation training (MyBrainTraining) for 8 weeks. Side effects were assessed after the completion of each intervention (post) using the Short Inventory of the Assessment of Negative Effects (SIAN) and again 6 months later (follow-up) using the Negative Effects Questionnaire (NEQ). D-MCT and MyBrainTraining did not differ significantly in the number of side effects. At post assessment, 50% of the D-MCT group and 59% of the MyBrainTraining group reported at least one side effect in the SIAN. The most frequently reported side effect was disappointment in subjective benefit of study treatment. At follow-up, 52% reported at least one side effect related to MyBrainTraining, while 34% reported at least one side effect related to the D-MCT in the NEQ. The most frequently reported side effects fell into the categories of “symptoms” and “quality”. Our NEQ version was missing one item due to a technical error. Also, allegiance effects should be considered. The sample size resulted in low statistical power. The relatively tolerable number of side effects suggests D-MCT and MyBrainTraining are safe and well-received treatment options for people with depression. Future studies should also measure negative effects to corroborate our results.


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