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  • 1
    In: Frontiers in Medicine, Frontiers Media SA, Vol. 8 ( 2021-12-7)
    Abstract: Purpose: The aim of this research is to develop an accurate and interpretable aggregated score not only for hospitalization outcome prediction (death/discharge) but also for the daily assessment of the COVID-19 patient's condition. Patients and Methods: In this single-center cohort study, real-world data collected within the first two waves of the COVID-19 pandemic was used (27.04.2020–03.08.2020 and 01.11.2020–19.01.2021, respectively). The first wave data (1,349 cases) was used as a training set for the score development, while the second wave data (1,453 cases) was used as a validation set. No overlapping cases were presented in the study. For all the available patients' features, we tested their association with an outcome. Significant features were taken for further analysis, and their partial sensitivity, specificity, and promptness were estimated. Sensitivity and specificity were further combined into a feature informativeness index. The developed score was derived as a weighted sum of nine features that showed the best trade-off between informativeness and promptness. Results: Based on the training cohort (median age ± median absolute deviation 58 ± 13.3, females 55.7%), the following resulting score was derived: APTT (4 points), CRP (3 points), D-dimer (4 points), glucose (4 points), hemoglobin (3 points), lymphocytes (3 points), total protein (6 points), urea (5 points), and WBC (4 points). Internal and temporal validation based on the second wave cohort (age 60 ± 14.8, females 51.8%) showed that a sensitivity and a specificity over 90% may be achieved with an expected prediction range of more than 7 days. Moreover, we demonstrated high robustness of the score to the varying peculiarities of the pandemic. Conclusions: An extensive application of the score during the pandemic showed its potential for optimization of patient management as well as improvement of medical staff attentiveness in a high workload stress. The transparent structure of the score, as well as tractable cutoff bounds, simplified its implementation into clinical practice. High cumulative informativeness of the nine score components suggests that these are the indicators that need to be monitored regularly during the follow-up of a patient with COVID-19.
    Type of Medium: Online Resource
    ISSN: 2296-858X
    Language: Unknown
    Publisher: Frontiers Media SA
    Publication Date: 2021
    detail.hit.zdb_id: 2775999-4
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  • 2
    In: Nature Communications, Springer Science and Business Media LLC, Vol. 14, No. 1 ( 2023-01-10)
    Abstract: Evolution of SARS-CoV-2 in immunocompromised hosts may result in novel variants with changed properties. While escape from humoral immunity certainly contributes to intra-host evolution, escape from cellular immunity is poorly understood. Here, we report a case of long-term COVID-19 in an immunocompromised patient with non-Hodgkin’s lymphoma who received treatment with rituximab and lacked neutralizing antibodies. Over the 318 days of the disease, the SARS-CoV-2 genome gained a total of 40 changes, 34 of which were present by the end of the study period. Among the acquired mutations, 12 reduced or prevented the binding of known immunogenic SARS-CoV-2 HLA class I antigens. By experimentally assessing the effect of a subset of the escape mutations, we show that they resulted in a loss of as much as ~1% of effector CD8 T cell response. Our results indicate that CD8 T cell escape represents a major underappreciated contributor to SARS-CoV-2 evolution in humans.
    Type of Medium: Online Resource
    ISSN: 2041-1723
    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2023
    detail.hit.zdb_id: 2553671-0
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  • 3
    In: BMC Microbiology, Springer Science and Business Media LLC, Vol. 19, No. 1 ( 2019-12)
    Abstract: Fecal microbiota transplantation (FMT) has been recently approved by FDA for the treatment of refractory recurrent clostridial colitis (rCDI). Success of FTM in treatment of rCDI led to a number of studies investigating the effectiveness of its application in the other gastrointestinal diseases. However, in the majority of studies the effects of FMT were evaluated on the patients with initially altered microbiota. The aim of our study was to estimate effects of FMT on the gut microbiota composition in healthy volunteers and to monitor its long-term outcomes. Results We have performed a combined analysis of three healthy volunteers before and after capsule FMT by evaluating their general condition, adverse clinical effects, changes of basic laboratory parameters, and several immune markers. Intestinal microbiota samples were evaluated by 16S rRNA gene and shotgun sequencing. The data analysis demonstrated profound shift towards the donor microbiota taxonomic composition in all volunteers. Following FMT, all the volunteers exhibited gut colonization with donor gut bacteria and persistence of this effect for almost ∼1 year of observation. Transient changes of immune parameters were consistent with suppression of T-cell cytotoxicity. FMT was well tolerated with mild gastrointestinal adverse events, however, one volunteer developed a systemic inflammatory response syndrome. Conclusions The FMT leads to significant long-term changes of the gut microbiota in healthy volunteers with the shift towards donor microbiota composition and represents a relatively safe procedure to the recipients without long-term adverse events.
    Type of Medium: Online Resource
    ISSN: 1471-2180
    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2019
    detail.hit.zdb_id: 2041505-9
    SSG: 12
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  • 4
    In: Bone Marrow Transplantation, Springer Science and Business Media LLC, Vol. 55, No. 3 ( 2020-03), p. 544-552
    Type of Medium: Online Resource
    ISSN: 0268-3369 , 1476-5365
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    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2020
    detail.hit.zdb_id: 2004030-1
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  • 5
    In: Terapevticheskii arkhiv, Consilium Medicum, Vol. 94, No. 11 ( 2022-12-26), p. 1225-1233
    Abstract: Aim. To conduct a retrospective assessment of the clinical and laboratory data of patients with severe forms of COVID-19 hospitalized in the intensive care and intensive care unit, in order to assess the contribution of various indicators to the likelihood of death. Materials and methods. A retrospective assessment of data on 224 patients with severe COVID-19 admitted to the intensive care unit was carried out. The analysis included the data of biochemical, clinical blood tests, coagulograms, indicators of the inflammatory response. When transferring to the intensive care units (ICU), the indicators of the formalized SOFA and APACHE scales were recorded. Anthropometric and demographic data were downloaded separately. Results. Analysis of obtained data, showed that only one demographic feature (age) and a fairly large number of laboratory parameters can serve as possible markers of an unfavorable prognosis. We identified 12 laboratory features the best in terms of prediction: procalcitonin, lymphocytes (absolute value), sodium (ABS), creatinine, lactate (ABS), D-dimer, oxygenation index, direct bilirubin, urea, hemoglobin, C-reactive protein, age, LDH. The combination of these features allows to provide the quality of the forecast at the level of AUC=0.85, while the known scales provided less efficiency (APACHE: AUC=0.78, SOFA: AUC=0.74). Conclusion. Forecasting the outcome of the course of COVID-19 in patients in ICU is relevant not only from the position of adequate distribution of treatment measures, but also from the point of view of understanding the pathogenetic mechanisms of the development of the disease.
    Type of Medium: Online Resource
    ISSN: 2309-5342 , 0040-3660
    Language: Unknown
    Publisher: Consilium Medicum
    Publication Date: 2022
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  • 6
    In: Annals of Clinical and Experimental Neurology, Research Center of Neurology, Vol. 17, No. 1 ( 2023-03-29), p. 27-35
    Abstract: Introduction. Modern transplantation and biological therapy methods are associated with a wide range of adverse events and complications. Incidence and variety of neurological complications mostly depend on myelo- and immunosuppression severity and duration as well as on donor's and recipient's characteristics. The most frequent complications involving the nervous system include neurotoxic reactions, infections, autoimmune and lymphoproliferative diseases, and dysmetabolic conditions as well as cerebrovascular complications that potentially affect transplantation outcomes. Objective. To evaluate the impact of post-transplantation cerebrovascular events (CVEs) on transplantation outcomes in patients with hematologic malignancies. Materials and methods. We analyzed 899 transplantations performed at the Raisa Gorbacheva Memorial Research Institute for Pediatric Oncology, Hematology, and Transplantation, Pavlov First Saint Petersburg State Medical University, from 2016 to 2018. We assessed transplantation parameters and donor's and recipient's characteristics by intergroup comparison, pseudo-randomization (propensity score matching), KaplanMeier survival analysis, and log-rank tests. Results. Post-transplantatively, CVEs developed in 2.6% (n = 23) of cases: 13 (1.4%) ischemic strokes and 11 (1.2%) hemorrhagic strokes or intracranial hemorrhages were diagnosed. CVEs developed on days 99.5 39.2 post hematopoetic stem cell transplantation (HSCT). There were more patients with non-malignant conditions in the CVE group as compared to the non-CVE group (21.7% vs 7.9%; p = 0.017). Patients with CVE had a significantly lower Karnofsky index (75.6 21.3 vs 85.2 14.9; p = 0.008). Statistically, we also note some non-significant trends: patients with CVE more often underwent allogenic HSCT (82.6% vs 64.0%; p = 0.077) while donors were more often partially (rather than totally) HLA compatible for recipients (39.1% vs 21.1%; p = 0.33). Patients with CVE more often had a history of venous thromboses (13.3% vs 4.2%; p = 0.077). Post-HSCT stroke decreased post-transplantation longevity by approximately 3 times (331.8 81.6 vs 897.9 25.4 post HSCT; p = 0.0001). In the CVE group, survival during first 180 days post HSCT (landmarks post-HSCT Day+60 and Day+180) was significantly lower as compared to that in the CVE-free group. If CVE developed during first 30 days and 100 days post HSCT, vascular catastrophe did not affect post-HSCT survival significantly. Conclusion. Whereas ischemic stroke is a long-term HSCT complication (beyond D+100 post transplantation), hemorrhagic stroke is a short-term complication (D0D+100 post HSCT). CVEs affect survival in patients with hematologic malignancies, especially those developed between D+60 and D+180 post HSCT. History of venous abnormalities, low Karnofsky index at HSCT initiation, and the type of allogenic HSCT, especially from half-matched donors, can be considered as negative outcome risk factors in post-HSCT CVE.
    Type of Medium: Online Resource
    ISSN: 2409-2533 , 2075-5473
    Language: Unknown
    Publisher: Research Center of Neurology
    Publication Date: 2023
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  • 7
    Online Resource
    Online Resource
    Springer Science and Business Media LLC ; 2021
    In:  Health Information Science and Systems Vol. 9, No. 1 ( 2021-12)
    In: Health Information Science and Systems, Springer Science and Business Media LLC, Vol. 9, No. 1 ( 2021-12)
    Abstract: The COVID-19 pandemic showed an urgent need for decision support systems to help doctors at a time of stress and uncertainty. However, significant differences in hospital conditions, as well as skepticism of doctors about machine learning algorithms, limit their introduction into clinical practice. Our goal was to test and apply the principle of ”patient-like-mine” decision support in rapidly changing conditions of a pandemic. Methods In the developed system we implemented a fuzzy search that allows a doctor to compare their medical case with similar cases recorded in their medical center since the beginning of the pandemic. Various distance metrics were tried for obtaining clinically relevant search results. With the use of R programming language, we designed the first version of the system in approximately a week. A set of features for the comparison of the cases was selected with the use of random forest algorithm implemented in Caret. Shiny package was chosen for the design of GUI. Results The deployed tool allowed doctors to quickly estimate the current conditions of their patients by means of studying the most similar previous cases stored in the local health information system. The extensive testing of the system during the first wave of COVID-19 showed that this approach helps not only to draw a conclusion about the optimal treatment tactics and to train medical staff in real-time but also to optimize patients’ individual testing plans. Conclusions This project points to the possibility of rapid prototyping and effective usage of ”patient-like-mine” search systems at the time of a pandemic caused by a poorly known pathogen.
    Type of Medium: Online Resource
    ISSN: 2047-2501
    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2021
    detail.hit.zdb_id: 2697647-X
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  • 8
    In: Annals of Clinical and Experimental Neurology, Research Center of Neurology, Vol. 16, No. 2 ( 2022-06-30), p. 36-43
    Abstract: Introduction. More than 50,000 haematopoietic stem cell transplantations (HSCTs) are performed worldwide each year to treat malignant blood cancers, solid tumours, bone marrow aplasia, primary immunodeficiency conditions, autoimmune disorders, and storage disorders. The success of HSCTs depends on many factors, including patient's past medical history. Purpose. To assess the effect of an acute cerebrovascular accident (CVA) that occurred before the HSCT on the transplantation outcome in patients with blood cancer. Materials and methods. We examined the results of 899 transplantations conducted between 2016 and 2018 at the R.M. Gorbacheva Research Institute for Pediatric Oncology, Haematology and Transplantation of the Pavlov First Saint Petersburg State Medical University. We analysed transplantation parameters, as well as donor and recipient characteristics. Apart from intergroup comparisons, pseudo-randomization was performed using the Propensity Score Matching method. The survival rate analysis was conducted using the KaplanMeier estimate and the log rank test. Results. Sixteen patients (1.8%) had cerebrovascular events in their past history before the HSCT: ischaemic stroke in 0.4% of cases and haemorrhagic stroke or intracerebral haemorrhage in 1.4% of cases. Patients with a history of cerebrovascular events included more people with leukaemia (p = 0.02), had more often received an allogenic transplant (р = 0.01), the donors more often had a partial rather than a full HLA match with the recipient (р = 0.06), had a lower body mass index (р = 0.02), and a lower Karnofsky/Lansky score (р = 0.01) than patients in the control group. The presence of a cardiovascular event had a statistically significant association with reduced overall survival rate of HSCT recipients (р = 0.0012). Conclusion. Patients with blood cancer and stroke preceding the transplantation do not typically have any 'classical' risk factors (diabetes mellitus, venous system disorders, decreased cardiac output, significant atherosclerotic changes in precerebral arteries), therefore, secondary prevention guidelines for CVA during treatment of the main disease may not be effective and cannot be relied on. This article discusses the most likely causes of CVA in patients with blood cancer. A history of CVA before HSCT may have a significant effect on the transplantation outcome, but is not a contraindication for this treatment method. Recipient selection is a very important stage in HSCT planning. A multidisciplinary team should find a balance between the indications and contraindications for performing HSCT from an unrelated donor.
    Type of Medium: Online Resource
    ISSN: 2409-2533 , 2075-5473
    Language: Unknown
    Publisher: Research Center of Neurology
    Publication Date: 2022
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  • 9
    In: Scientific Reports, Springer Science and Business Media LLC, Vol. 13, No. 1 ( 2023-10-05)
    Abstract: The posttransplant relapse in Ph-positive ALL increases the risk of death. There is an unmet need for instruments to predict the risk of relapse and plan prophylaxis. In this study, we analyzed posttransplant data by machine learning algorithms. Seventy-four Ph-positive ALL patients with a median age of 30 (range 18–55) years who previously underwent allo-HSCT, were retrospectively enrolled. Ninety-three percent of patients received prophylactic/preemptive TKIs after allo-HSCT. The values of the BCR::ABL1 level at serial assessments and over variables were collected in specified intervals after allo-HSCT. They were used to model relapse risk with several machine-learning approaches. GBM proved superior to the other algorithms and provided a maximal AUC score of 0.91. BCR::ABL1 level before and after allo-HSCT, prediction moment, and chronic GvHD had the highest value in the model. It was shown that after Day + 100, both error rates do not exceed 22%, while before D + 100, the model fails to make accurate predictions. As a result, we determined BCR::ABL1 levels at which the relapse risk remains low. Thus, the current BCR::ABL1 level less than 0.06% in patients with chronic GvHD predicts low risk of relapse. At the same time, patients without chronic GVHD after allo-HSCT should be classified as high risk with any level of BCR::ABL1. GBM model with posttransplant laboratory values of BCR::ABL1 provides a high prediction of relapse after allo-HSCT in the era of TKIs prophylaxis. Validation of this approach is warranted.
    Type of Medium: Online Resource
    ISSN: 2045-2322
    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2023
    detail.hit.zdb_id: 2615211-3
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  • 10
    In: Blood, American Society of Hematology, Vol. 138, No. Supplement 1 ( 2021-11-05), p. 3934-3934
    Abstract: Background: Relapses after allo-HSCT remain an unsolved problem in Ph-positive acute lymphoblastic leukemia (ALL) patients, especially in patients with detectable BCR/ABL levels prior to allogeneic stem cell transplantation (allo-HSCT). Majority of centers make efforts to manage with it by preemptive or prophylactic administration of TKIs after allo-HSCT. However, the risk factors in this setting are yet to be determined. Moreover, persistence of minimal residual disease (MRD) after induction plays a critical role in relapse probability, but its fluctuation after transplant in the context of TKIs application is still a question. The aim of this study is to apply modern machine-learning approaches for building relapse predicting models and testing variable importance. Patients and methods: This study analyses the data in retrospective cohort of 74 Ph-positive ALL patients with posttransplant BCR/ABL expression levels available at different time intervals with median age of 30,5 years (range, 18-55), in whom allo-HSCT were performed between 2008 and 2021. Patient characteristics and features of the disease are presented in Table 1. For the analysis, all TKIs were divided into 2 groups TKIs1 - imatinib, TKIs2 - other TKIs, regardless of generation. Machine learning models were developed using R programming language and Caret package. The dependent variable was relapse after prediction moment, the following independent variable features were used: time intervals between allo-HSCT and prediction moment, BCR/ABL expression level at prediction moment, therapy after allo-HSCT (TKIs1 or TKIs2), the highest BCR/ABL expression level before prediction moment, chronic «graft-versus-host» disease (GvHD) before prediction for the patients, who reached D+100 after allo-HSCT. Results: At the time of analysis median follow-up was 26 months (range, 1-116). 5-year OS and EFS were 67,1% (95% CI 54,2 - 80) and 55,1% (95% CI 42,5 - 68,3), respectively, whereas 5-year cumulative incidence of relapse was 46,1% (95% CI 26,2 - 66) for MRD-positive prior to allo-HSCT patients, compared to 24,1% (95% CI 6,9-41,3) for MRD-negative patients (р=0,04). The resulting ROC-curve for 3 most effective classification models is given in figure 1A. As one can see Gradient Boosting Method (GBM) provided maximal AUC score (0.88). For this a decision-making threshold may be adjusted for obtaining Specificity = 0.75, Sensitivity = 0.88. Variable importance plot (figure 1B) showed that the highest BCR/ABL level, prediction moment, chronic GvHD and current BCR/ABL level have the strongest importance, while preceding therapy turned out to be less significant factor. In fact, exclusion of TKIs type almost did not affect the ROC curves. In GBM model AUC still demonstrated appropriate level of 0.87. When analyzing the model accuracy, false-negative rate (FNR) and false-positive rate (FPR) errors were estimated for the three ranges of prediction moments (figure 1C). It was shown that after D+100 both error rates don't exceed 22%, while before D+100 the model fails to make accurate prediction based on the independent variables used. Conclusions: Using independent factors, we built the model for both bone marrow and extramedullary relapses prediction after allo-HSCT with high sensitivity and reasonable specificity based on the relatively small group of patients. According to the predicting model, we confirm, that a high level of BCR/ABL at any time point after allo-HSCT is the most significant predictor of relapse, which may indicate the presence of subclones of cells that cause resistance to chemotherapy or TKIs. The BCR/ABL MRD levels before D+100 have low predictive ability for early relapses, which may develop rapidly without MRD phase. At the same time, BCR/ABL levels relatively accurate predict relapses after D+100 with ongoing TKI prophylaxis. The absence of chronic GvHD is an important independent factor influencing the risk of relapse. This means that for high-risk patients, approaches to induce a «graft-versus-leukemia» effect should be considered. In addition, prophylactic use of monoclonal antibodies in combination with TKIs may be considered to prevent relapse in the absence of chronic GvHD in high-risk patients. In summary, we believe that verification of this model on a multicenter group of patients is required to facilitate its clinical application. Figure 1 Figure 1. Disclosures Kulagin: Pfizer: Speakers Bureau; Johnson & Johnson: Speakers Bureau; Alexion: Research Funding; Roche: Speakers Bureau; Novartis: Speakers Bureau; Generium: Speakers Bureau; Sanofi: Speakers Bureau; Apellis: Research Funding; Biocad: Research Funding; X4 Pharmaceuticals: Research Funding.
    Type of Medium: Online Resource
    ISSN: 0006-4971 , 1528-0020
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    Language: English
    Publisher: American Society of Hematology
    Publication Date: 2021
    detail.hit.zdb_id: 1468538-3
    detail.hit.zdb_id: 80069-7
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