14 results on '"Nath, Tanmay"'
Search Results
2. Resistin predicts disease severity and survival in patients with pulmonary arterial hypertension.
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Gao, Li, Skinner, John, Nath, Tanmay, Lin, Qing, Griffiths, Megan, Damico, Rachel L., Pauciulo, Michael W., Nichols, William C., Hassoun, Paul M., Everett, Allen D., and Johns, Roger A.
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PULMONARY arterial hypertension ,RESISTIN ,OVERALL survival ,PULMONARY hypertension ,SINGLE nucleotide polymorphisms ,RIGHT ventricular hypertrophy ,BIOMARKERS - Abstract
Background: Abnormal remodeling of distal pulmonary arteries in patients with pulmonary arterial hypertension (PAH) leads to progressively increased pulmonary vascular resistance, followed by right ventricular hypertrophy and failure. Despite considerable advancements in PAH treatment prognosis remains poor. We aim to evaluate the potential for using the cytokine resistin as a genetic and biological marker for disease severity and survival in a large cohort of patients with PAH. Methods: Biospecimens, clinical, and genetic data for 1121 adults with PAH, including 808 with idiopathic PAH (IPAH) and 313 with scleroderma-associated PAH (SSc-PAH), were obtained from a national repository. Serum resistin levels were measured by ELISA, and associations between resistin levels, clinical variables, and single nucleotide polymorphism genotypes were examined with multivariable regression models. Machine-learning (ML) algorithms were applied to develop and compare risk models for mortality prediction. Results: Resistin levels were significantly higher in all PAH samples and PAH subtype (IPAH and SSc-PAH) samples than in controls (P <.0001) and had significant discriminative abilities (AUCs of 0.84, 0.82, and 0.91, respectively; P <.001). High resistin levels (above 4.54 ng/mL) in PAH patients were associated with older age (P =.001), shorter 6-min walk distance (P =.001), and reduced cardiac performance (cardiac index, P =.016). Interestingly, mutant carriers of either rs3219175 or rs3745367 had higher resistin levels (adjusted P =.0001). High resistin levels in PAH patients were also associated with increased risk of death (hazard ratio: 2.6; 95% CI: 1.27–5.33; P <.0087). Comparisons of ML–derived survival models confirmed satisfactory prognostic value of the random forest model (AUC = 0.70, 95% CI: 0.62–0.79) for PAH. Conclusions: This work establishes the importance of resistin in the pathobiology of human PAH. In line with its function in rodent models, serum resistin represents a novel biomarker for PAH prognostication and may indicate a new therapeutic avenue. ML-derived survival models highlighted the importance of including resistin levels to improve performance. Future studies are needed to develop multi-marker assays that improve noninvasive risk stratification. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. Real-time quantitation of thyroidal radioiodine uptake in thyroid disease with monitoring by a collar detection device
- Author
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Santhanam, Prasanna, Solnes, Lilja, Nath, Tanmay, Roussin, Jean-Paul, Gray, David, Frey, Eric, Sgouros, George, and Ladenson, Paul W.
- Published
- 2021
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4. Network-specific sex differentiation of intrinsic brain function in males with autism
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Floris, Dorothea L., Lai, Meng-Chuan, Nath, Tanmay, Milham, Michael P., and Di Martino, Adriana
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- 2018
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5. Relationship Between TSH Levels and Cognition in the Young Adult: An Analysis of the Human Connectome Project Data.
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Santhanam, Prasanna, Nath, Tanmay, Lindquist, Martin A., and Cooper, David S.
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THYROTROPIN ,COGNITIVE ability ,MENTAL health - Abstract
Context: The nature of the relationship between serum thyrotropin (TSH) levels and higher cognitive abilities is unclear, especially within the normal reference range and in the younger population. Objective: To assess the relationship between serum TSH levels and mental health and sleep quality parameters (fluid intelligence [Gf], MMSE (Mini-Mental State Examination), depression scores, and, finally, Pittsburgh Sleep Quality Index (PSQI) scores (working memory, processing speed, and executive function) in young adults. Methods: This was a retrospective analysis of the data from the Human Connectome Project (HCP). The HCP consortium is seeking to map human brain circuits systematically and identify their relationship to behavior in healthy adults. Included were 391 female and 412 male healthy participants aged 22-35 years at the time of the screening interview. We excluded persons with serum TSH levels outside the reference range (0.4-4.5 mU/L). TSH was transformed logarithmically (log TSH). All the key variables were normalized and then linear regression analysis was performed to assess the relationship between log TSH as a cofactor and Gf as the dependent variable. Finally, a machine learning method, random forest regression, predicted Gf from the dependent variables (including alcohol and tobacco use). The main outcome was normalized Gf (nGf) and Gf scores. Results: Log TSH was a significant co-predictor of nGF in females (β = 0.31(±0.1), P < .01) but not in males. Random forest analysis showed that the model(s) had a better predictive value for females (r = 0.39, mean absolute error [MAE] = 0.81) than males (r = 0.24, MAE = 0.77). Conclusion: Higher serum TSH levels might be associated with higher Gf scores in young women. [ABSTRACT FROM AUTHOR]
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- 2022
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6. Role of Artificial Intelligence in Radiogenomics for Cancers in the Era of Precision Medicine.
- Author
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Saxena, Sanjay, Jena, Biswajit, Gupta, Neha, Das, Suchismita, Sarmah, Deepaneeta, Bhattacharya, Pallab, Nath, Tanmay, Paul, Sudip, Fouda, Mostafa M., Kalra, Manudeep, Saba, Luca, Pareek, Gyan, and Suri, Jasjit S.
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TUMOR genetics ,TUMOR treatment ,THERAPEUTICS ,COMPUTERS in medicine ,DEEP learning ,ARTIFICIAL intelligence ,INDIVIDUALIZED medicine ,CANCER relapse ,MACHINE learning ,DIAGNOSTIC imaging ,GENOMICS ,TUMORS ,PREDICTION models ,PROGRESSION-free survival ,PHENOTYPES - Abstract
Simple Summary: Recently, radiogenomics has played a significant role and offered a new understanding of cancer's biology and behavior in response to standard therapy. It also provides a more precise prognosis, investigation, and analysis of the patient's cancer. Over the years, Artificial Intelligence (AI) has provided a significant strength in radiogenomics. In this paper, we offer computational and oncological prospects of the role of AI in radiogenomics, as well as its offers, achievements, opportunities, and limitations in the current clinical practices. Radiogenomics, a combination of "Radiomics" and "Genomics," using Artificial Intelligence (AI) has recently emerged as the state-of-the-art science in precision medicine, especially in oncology care. Radiogenomics syndicates large-scale quantifiable data extracted from radiological medical images enveloped with personalized genomic phenotypes. It fabricates a prediction model through various AI methods to stratify the risk of patients, monitor therapeutic approaches, and assess clinical outcomes. It has recently shown tremendous achievements in prognosis, treatment planning, survival prediction, heterogeneity analysis, reoccurrence, and progression-free survival for human cancer study. Although AI has shown immense performance in oncology care in various clinical aspects, it has several challenges and limitations. The proposed review provides an overview of radiogenomics with the viewpoints on the role of AI in terms of its promises for computational as well as oncological aspects and offers achievements and opportunities in the era of precision medicine. The review also presents various recommendations to diminish these obstacles. [ABSTRACT FROM AUTHOR]
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- 2022
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7. Machine learning approach to predicting albuminuria in persons with type 2 diabetes: An analysis of the LOOK AHEAD Cohort.
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Khitan, Zeid, Nath, Tanmay, and Santhanam, Prasanna
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HYPERTENSION , *GLOMERULAR filtration rate , *RESEARCH , *RESEARCH methodology , *EVALUATION research , *TYPE 2 diabetes , *COMPARATIVE studies , *ALBUMINURIA , *DISEASE complications - Abstract
Albuminuria and estimated glomerular filtration rate (e-GFR) are early markers of renal disease and cardiovascular outcomes in persons with diabetes. Although body composition has been shown to predict systolic blood pressure, its application in predicting albuminuria is unknown. In this study, we have used machine learning methods to assess the risk of albuminuria in persons with diabetes using body composition and other determinants of metabolic health. This study is a comparative analysis of the different methods to predict albuminuria in persons with diabetes mellitus who are older than 40 years of age, using the LOOK AHEAD study cohort-baseline characteristics. Age, different metrics of body composition, duration of diabetes, hemoglobin A1c, serum creatinine, serum triglycerides, serum cholesterol, serum HDL, serum LDL, maximum exercise capacity, systolic blood pressure, diastolic blood pressure, and the ankle-brachial index are used as predictors of albuminuria. We used Area under the curve (AUC) as a metric to compare the classification results of different algorithms, and we show that AUC for the different models are as follows: Random forest classifier-0.65, gradient boost classifier-0.61, logistic regression-0.66, support vector classifier -0.61, multilayer perceptron -0.67, and stacking classifier-0.62. We used the Random forest model to show that the duration of diabetes, A1C, serum triglycerides, SBP, Maximum exercise Capacity, serum creatinine, subtotal lean mass, DBP, and subtotal fat mass are important features for the classification of albuminuria. In summary, when applied to metabolic imaging (using DXA), machine learning techniques offer unique insights into the risk factors that determine the development of albuminuria in diabetes. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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8. Body fat predicts exercise capacity in persons with Type 2 Diabetes Mellitus: A machine learning approach.
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Nath, Tanmay, Ahima, Rexford S., and Santhanam, Prasanna
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TYPE 2 diabetes , *FAT , *MACHINE learning , *BODY composition , *DUAL-energy X-ray absorptiometry , *CARDIOVASCULAR diseases risk factors , *ACCOUNTING software - Abstract
Diabetes mellitus is associated with increased cardiovascular disease (CVD) related morbidity, mortality and death. Exercise capacity in persons with type 2 diabetes has been shown to be predictive of cardiovascular events. In this study, we used the data from the prospective randomized LOOK AHEAD study and used machine learning algorithms to help predict exercise capacity (measured in Mets) from the baseline data that included cardiovascular history, medications, blood pressure, demographic information, anthropometric and Dual-energy X-Ray Absorptiometry (DXA) measured body composition metrics. We excluded variables with high collinearity and included DXA obtained Subtotal (total minus head) fat percentage and Subtotal lean mass (gms). Thereafter, we used different machine learning methods to predict maximum exercise capacity. The different machine learning models showed a strong predictive performance for both females and males. Our study shows that using baseline data from a large prospective cohort, we can predict maximum exercise capacity in persons with diabetes mellitus. We show that subtotal fat percentage is the most important feature for predicting the exercise capacity for males and females after accounting for other important variables. Until now, BMI and waist circumference were commonly used surrogates for adiposity and there was a relative under-appreciation of body composition metrics for understanding the pathophysiology of CVD. The recognition of body fat percentage as an important marker in determining CVD risk has prognostic implications with respect to cardiovascular morbidity and mortality. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
9. Een computer vision raamwerk voor het kwantificeren van het sociale gedrag van Drosophila melanogaster
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Nath, Tanmay
- Subjects
Physics - Published
- 2017
10. Artificial intelligence may offer insight into factors determining individual TSH level.
- Author
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Santhanam, Prasanna, Nath, Tanmay, Mohammad, Faiz Khan, and Ahima, Rexford S.
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THYROTROPIN , *ARTIFICIAL intelligence , *MULTILAYER perceptrons , *MACHINE learning , *BODY mass index , *SUPPORT vector machines , *PERIODIC health examinations , *COMPARATIVE studies - Abstract
The factors that determine Serum Thyrotropin (TSH) levels have been examined through different methods, using different covariates. However, the use of machine learning methods has so far not been studied in population databases like NHANES (National Health and Nutritional Examination Survey) to predict TSH. In this study, we performed a comparative analysis of different machine learning methods like Linear regression, Random forest, Support vector machine, multilayer perceptron and stacking regression to predict TSH and classify individuals with normal, low and high TSH levels. We considered Free T4, Anti-TPO antibodies, T3, Body Mass Index (BMI), Age and Ethnicity as the predictor variables. A total of 9818 subjects were included in this comparative analysis. We used coefficient of determination (r2) value to compare the results for predicting the TSH and show that the Random Forest, Gradient Boosting and Stacking Regression perform equally well in predicting TSH and achieve the highest r2 value = 0.13, with mean absolute error of 0.78. Moreover, we found that Anti-TPO is the most important feature in predicting TSH followed by Age, BMI, T3 and Free-T4 for the regression analysis. While classifying TSH into normal, high or low levels, our comparative analysis also shows that Random forest performs the best in the classification study, performed with individuals with normal, high and low levels of TSH. We found the following Areas Under Curve (AUC); for low TSH, AUC = 0.61, normal TSH, AUC = 0.61 and elevated TSH AUC = 0.69. Additionally, we found that Anti-TPO was the most important feature in classifying TSH. In this study, we suggest that artificial intelligence and machine learning methods might offer an insight into the complex hypothalamic-pituitary -thyroid axis and may be an invaluable tool that guides us in making appropriate therapeutic decisions (thyroid hormone dosing) for the individual patient. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
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11. DXA measured body composition predicts blood pressure using machine learning methods.
- Author
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Nath, Tanmay, Ahima, Rexford S., and Santhanam, Prasanna
- Published
- 2020
- Full Text
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12. A simple computer vision pipeline reveals the effects of isolation on social interaction dynamics in Drosophila.
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Linneweber, Gerit A., Claeys, Annelies, Liu, Guangda, Hassan, Bassem A., Sneyders, Manu, Nicasy, Hans, Scheunders, Paul, Nath, Tanmay, De Backer, Steve, Weyn, Barbara, Guo, Zhengyu, Li, Jin, Yu, Peng, and Bengochea, Mercedes
- Subjects
ISOLATION (Philosophy) ,DROSOPHILA ,SOCIAL isolation ,FRUIT flies ,GENE expression ,CHARTS, diagrams, etc. ,ANIMAL behavior - Abstract
Isolation profoundly influences social behavior in all animals. In humans, isolation has serious effects on health and disease. Drosophila melanogaster is a powerful model to study small-scale, temporally-transient social behavior. However, longer-term analysis of large groups of flies is hampered by the lack of effective and reliable tools. We built a new imaging arena and improved the existing tracking algorithm to reliably follow a large number of flies simultaneously. Next, based on the automatic classification of touch and graph-based social network analysis, we designed an algorithm to quantify changes in the social network in response to prior social isolation. We observed that isolation significantly and swiftly enhanced individual and local social network parameters depicting near-neighbor relationships. We explored the genome-wide molecular correlates of these behavioral changes and found that whereas behavior changed throughout the six days of isolation, gene expression alterations occurred largely on day one. These changes occurred mostly in metabolic genes, and we verified the metabolic changes by showing an increase of lipid content in isolated flies. In summary, we describe a highly reliable tracking and analysis pipeline for large groups of flies that we use to unravel the behavioral, molecular and physiological impact of isolation on social network dynamics in Drosophila. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
13. Early predictive values of clinical assessments for ARDS mortality: a machine-learning approach.
- Author
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Ding N, Nath T, Damarla M, Gao L, and Hassoun PM
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- Humans, Male, Female, Retrospective Studies, Middle Aged, Prognosis, Aged, Algorithms, Adult, Predictive Value of Tests, ROC Curve, Respiratory Distress Syndrome mortality, Respiratory Distress Syndrome diagnosis, Machine Learning
- Abstract
Acute respiratory distress syndrome (ARDS) is a devastating critical care syndrome with significant morbidity and mortality. The objective of this study was to evaluate the predictive values of dynamic clinical indices by developing machine-learning (ML) models for early and accurate clinical assessment of the disease prognosis of ARDS. We conducted a retrospective observational study by applying dynamic clinical data collected in the ARDSNet FACTT Trial (n = 1000) to ML-based algorithms for predicting mortality. In order to compare the significance of clinical features dynamically, we further applied the random forest (RF) model to nine selected clinical parameters acquired at baseline and day 3 independently. An RF model trained using clinical data collected at day 3 showed improved performance and prognostication efficacy (area under the curve [AUC]: 0.84, 95% CI: 0.78-0.89) compared to baseline with an AUC value of 0.72 (95% CI: 0.65-0.78). Mean airway pressure (MAP), bicarbonate, age, platelet count, albumin, heart rate, and glucose were the most significant clinical indicators associated with mortality at day 3. Thus, clinical features collected early (day 3) improved performance of integrative ML models with better prognostication for mortality. Among these, MAP represented the most important feature for ARDS patients' early risk stratification., (© 2024. The Author(s).)
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- 2024
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- View/download PDF
14. A simple computer vision pipeline reveals the effects of isolation on social interaction dynamics in Drosophila.
- Author
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Liu G, Nath T, Linneweber GA, Claeys A, Guo Z, Li J, Bengochea M, De Backer S, Weyn B, Sneyders M, Nicasy H, Yu P, Scheunders P, and Hassan BA
- Subjects
- Algorithms, Animals, Computers, Drosophila Proteins genetics, Drosophila Proteins metabolism, Drosophila melanogaster genetics, Drosophila melanogaster metabolism, Interpersonal Relations, Social Behavior, Software, Behavior, Animal physiology, Population Surveillance methods, Social Isolation psychology
- Abstract
Isolation profoundly influences social behavior in all animals. In humans, isolation has serious effects on health. Drosophila melanogaster is a powerful model to study small-scale, temporally-transient social behavior. However, longer-term analysis of large groups of flies is hampered by the lack of effective and reliable tools. We built a new imaging arena and improved the existing tracking algorithm to reliably follow a large number of flies simultaneously. Next, based on the automatic classification of touch and graph-based social network analysis, we designed an algorithm to quantify changes in the social network in response to prior social isolation. We observed that isolation significantly and swiftly enhanced individual and local social network parameters depicting near-neighbor relationships. We explored the genome-wide molecular correlates of these behavioral changes and found that whereas behavior changed throughout the six days of isolation, gene expression alterations occurred largely on day one. These changes occurred mostly in metabolic genes, and we verified the metabolic changes by showing an increase of lipid content in isolated flies. In summary, we describe a highly reliable tracking and analysis pipeline for large groups of flies that we use to unravel the behavioral, molecular and physiological impact of isolation on social network dynamics in Drosophila., Competing Interests: I have read the journal’s policy and the authors of this manuscript declare the following competing interests: Authors Hans Nicasy and Manu Sneyders work for Peira, a for profit company. Authors Steve De Backer and, Barbara Weyn worked for DCI Labs, a for profit company.
- Published
- 2018
- Full Text
- View/download PDF
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