13 results on '"Raut G"'
Search Results
2. BIOLOGICAL ACTIVITY OF QUINAZOLINONE DERIVATIVES: A REVIEW
- Author
-
WAGHMARE SWEETI M., MANCHARE AKANKSHA M., SHAIKH AVESH Y., and DIKSHA RAUT G.
- Subjects
Pharmaceutical Science - Abstract
The heterocyclic compounds have a great importance in medicinal chemistry. Quinazolinone is a heterocyclic chemical compound. A quinazolinone with a carbonyl group in the C4N2 ring. The two isomers are possible: 2-Quinazolinone and 4-Quinazolinone, with the 4-isomer being the more common. These compounds are of interest in medicinal chemistry. Quinazolinone derivatives were reported to possess analgesic and anti-inflammatory activity, Antibacterial, Diuretic, Antihypertensive, Anti-diabetics, Anticancer, Antitumor, Anti-fungal, Anti-malarial, Anti-protozoal agent and many other biological Action. This skeleton is an important pharmacophore considered as a privileged structure.
- Published
- 2023
3. Multicenter Deployment of a Real-time Ventilator Management Dashboard With Alerts: Sustained Improvement in Lung Protective Ventilation in 5 Hospital Centers
- Author
-
Tandon, P., primary, Nguyen, K.-A.-N., additional, Raut, G., additional, Ranginwala, S., additional, Collazo, M., additional, Chicanowitz, G., additional, Powers, R., additional, Veksler, A., additional, Berlin, B., additional, Oldenburg, G., additional, Timsina, P., additional, Kohli-Seth, R., additional, Freeman, R., additional, Levin, M., additional, and Powell, C.A., additional
- Published
- 2023
- Full Text
- View/download PDF
4. Impact of a Real-Time Ventilator Management Dashboard with Alerts: Sustained Hospital-Wide Improvement in Lung Protective Ventilation
- Author
-
Tandon, P., primary, Nguyen, K.-A.-N., additional, Raut, G., additional, Ranginwala, S., additional, Oldenberg, G., additional, Mathews, K.S., additional, Timsina, P., additional, Kohli-Seth, R., additional, Freeman, R., additional, Powell, C.A., additional, and Levin, M., additional
- Published
- 2022
- Full Text
- View/download PDF
5. Studies of Agrometeorological Indices on Hybrids Maize (Zea mays L.) under Different Weather Condition
- Author
-
Shingne, S. V., primary, Asewar, B. V., additional, and Raut, G. B., additional
- Published
- 2020
- Full Text
- View/download PDF
6. New Distribution Record of Praying Mantis Gonypetyllis semuncialis Wood-Mason, 1891 from Western Ghats, India
- Author
-
Raut, G. A., primary and Gaikwad, S. M., additional
- Published
- 2018
- Full Text
- View/download PDF
7. Timely Digital Patient-Clinician Communication in Specialist Clinical Services for Young People:A Mixed-Methods Study (The LYNC Study)
- Author
-
Griffiths, F, Bryce, C, Cave, J, Dritsaki, M, Fraser, J, Hamilton, K, Huxley, C, Ignatowicz, A, Kim, SW, Kimani, P, Madan, J, Slowther, AM, Sujan, M, Sturt, J, LYNC Study Group, Armoiry, X., Atherton, H., Buckle, A., Court, R., Elder, P., Karasouli, Eleni, May, M., Sutcliffe, P. A., Svahnstrom, I., Taggart, F., Uddin, A., Verran, A., Dliwayo, T. R., Forjaz, V., Goodwin, R., Matharu, H., Sankaranarayanan, S., Musumadi , L., Paul, M., and Raut, G.
- Subjects
Adult ,Telemedicine ,Patient communication ,020205 medical informatics ,National Health Service ,Adolescent ,RJ ,media_common.quotation_subject ,digital health care ,Health Informatics ,Context (language use) ,02 engineering and technology ,young people ,03 medical and health sciences ,Patient safety ,Young Adult ,0302 clinical medicine ,Nursing ,NHS ,long-term conditions ,Health care ,0202 electrical engineering, electronic engineering, information engineering ,Digital communication ,Medicine ,Humans ,Information governance ,digital communication ,030212 general & internal medicine ,Empowerment ,patient communication ,media_common ,Original Paper ,Internet ,Digital health care ,business.industry ,Communication ,Health Services ,Mental health ,Long-term conditions ,Young people ,Thematic analysis ,business ,RA ,Delivery of Health Care - Abstract
Background: Young people (aged 16-24 years) with long-term health conditions can disengage from health services, resulting in poor health outcomes, but clinicians in the UK National Health Service (NHS) are using digital communication to try to improve engagement. Evidence of effectiveness of this digital communication is equivocal. There are gaps in evidence as to how it might work, its cost, and ethical and safety issues.Objective: Our objective was to understand how the use of digital communication between young people with long-term conditions and their NHS specialist clinicians changes engagement of the young people with their health care; and to identify costs and necessary safeguards.Methods: We conducted mixed-methods case studies of 20 NHS specialist clinical teams from across England and Wales and their practice providing care for 13 different long-term physical or mental health conditions. We observed 79 clinical team members and interviewed 165 young people aged 16-24 years with a long-term health condition recruited via case study clinical teams, 173 clinical team members, and 16 information governance specialists from study NHS Trusts. We conducted a thematic analysis of how digital communication works, and analyzed ethics, safety and governance, and annual direct costs.Results: Young people and their clinical teams variously used mobile phone calls, text messages, email, and voice over Internet protocol. Length of clinician use of digital communication varied from 1 to 13 years in 17 case studies, and was being considered in 3. Digital communication enables timely access for young people to the right clinician at the time when it can make a difference to how they manage their health condition. This is valued as an addition to traditional clinic appointments and can engage those otherwise disengaged, particularly at times of change for young people. It can enhance patient autonomy, empowerment and activation. It challenges the nature and boundaries of therapeutic relationships but can improve trust. The clinical teams studied had not themselves formally evaluated the impact of their intervention. Staff time is the main cost driver, but offsetting savings are likely elsewhere in the health service. Risks include increased dependence on clinicians, inadvertent disclosure of confidential information, and communication failures, which are mostly mitigated by young people and clinicians using common-sense approaches.Conclusions: As NHS policy prompts more widespread use of digital communication to improve the health care experience, our findings suggest that benefit is most likely, and harms are mitigated, when digital communication is used with patients who already have a relationship of trust with the clinical team, and where there is identifiable need for patients to have flexible access, such as when transitioning between services, treatments, or lived context. Clinical teams need a proactive approach to ethics, governance, and patient safety.
- Published
- 2017
8. Evaluating the accuracy of a state-of-the-art large language model for prediction of admissions from the emergency room.
- Author
-
Glicksberg BS, Timsina P, Patel D, Sawant A, Vaid A, Raut G, Charney AW, Apakama D, Carr BG, Freeman R, Nadkarni GN, and Klang E
- Subjects
- Humans, Retrospective Studies, Artificial Intelligence, Natural Language Processing, Machine Learning, Supervised Machine Learning, Emergency Service, Hospital, Electronic Health Records, Patient Admission
- Abstract
Background: Artificial intelligence (AI) and large language models (LLMs) can play a critical role in emergency room operations by augmenting decision-making about patient admission. However, there are no studies for LLMs using real-world data and scenarios, in comparison to and being informed by traditional supervised machine learning (ML) models. We evaluated the performance of GPT-4 for predicting patient admissions from emergency department (ED) visits. We compared performance to traditional ML models both naively and when informed by few-shot examples and/or numerical probabilities., Methods: We conducted a retrospective study using electronic health records across 7 NYC hospitals. We trained Bio-Clinical-BERT and XGBoost (XGB) models on unstructured and structured data, respectively, and created an ensemble model reflecting ML performance. We then assessed GPT-4 capabilities in many scenarios: through Zero-shot, Few-shot with and without retrieval-augmented generation (RAG), and with and without ML numerical probabilities., Results: The Ensemble ML model achieved an area under the receiver operating characteristic curve (AUC) of 0.88, an area under the precision-recall curve (AUPRC) of 0.72 and an accuracy of 82.9%. The naïve GPT-4's performance (0.79 AUC, 0.48 AUPRC, and 77.5% accuracy) showed substantial improvement when given limited, relevant data to learn from (ie, RAG) and underlying ML probabilities (0.87 AUC, 0.71 AUPRC, and 83.1% accuracy). Interestingly, RAG alone boosted performance to near peak levels (0.82 AUC, 0.56 AUPRC, and 81.3% accuracy)., Conclusions: The naïve LLM had limited performance but showed significant improvement in predicting ED admissions when supplemented with real-world examples to learn from, particularly through RAG, and/or numerical probabilities from traditional ML models. Its peak performance, although slightly lower than the pure ML model, is noteworthy given its potential for providing reasoning behind predictions. Further refinement of LLMs with real-world data is necessary for successful integration as decision-support tools in care settings., (© The Author(s) 2024. Published by Oxford University Press on behalf of the American Medical Informatics Association. All rights reserved. For permissions, please email: journals.permissions@oup.com.)
- Published
- 2024
- Full Text
- View/download PDF
9. Traditional Machine Learning, Deep Learning, and BERT (Large Language Model) Approaches for Predicting Hospitalizations From Nurse Triage Notes: Comparative Evaluation of Resource Management.
- Author
-
Patel D, Timsina P, Gorenstein L, Glicksberg BS, Raut G, Cheetirala SN, Santana F, Tamegue J, Kia A, Zimlichman E, Levin MA, Freeman R, and Klang E
- Abstract
Background: Predicting hospitalization from nurse triage notes has the potential to augment care. However, there needs to be careful considerations for which models to choose for this goal. Specifically, health systems will have varying degrees of computational infrastructure available and budget constraints., Objective: To this end, we compared the performance of the deep learning, Bidirectional Encoder Representations from Transformers (BERT)-based model, Bio-Clinical-BERT, with a bag-of-words (BOW) logistic regression (LR) model incorporating term frequency-inverse document frequency (TF-IDF). These choices represent different levels of computational requirements., Methods: A retrospective analysis was conducted using data from 1,391,988 patients who visited emergency departments in the Mount Sinai Health System spanning from 2017 to 2022. The models were trained on 4 hospitals' data and externally validated on a fifth hospital's data., Results: The Bio-Clinical-BERT model achieved higher areas under the receiver operating characteristic curve (0.82, 0.84, and 0.85) compared to the BOW-LR-TF-IDF model (0.81, 0.83, and 0.84) across training sets of 10,000; 100,000; and ~1,000,000 patients, respectively. Notably, both models proved effective at using triage notes for prediction, despite the modest performance gap., Conclusions: Our findings suggest that simpler machine learning models such as BOW-LR-TF-IDF could serve adequately in resource-limited settings. Given the potential implications for patient care and hospital resource management, further exploration of alternative models and techniques is warranted to enhance predictive performance in this critical domain., International Registered Report Identifier (irrid): RR2-10.1101/2023.08.07.23293699., (©Dhavalkumar Patel, Prem Timsina, Larisa Gorenstein, Benjamin S Glicksberg, Ganesh Raut, Satya Narayan Cheetirala, Fabio Santana, Jules Tamegue, Arash Kia, Eyal Zimlichman, Matthew A Levin, Robert Freeman, Eyal Klang. Originally published in JMIR AI (https://ai.jmir.org), 27.08.2024.)
- Published
- 2024
- Full Text
- View/download PDF
10. Evaluating prompt engineering on GPT-3.5's performance in USMLE-style medical calculations and clinical scenarios generated by GPT-4.
- Author
-
Patel D, Raut G, Zimlichman E, Cheetirala SN, Nadkarni GN, Glicksberg BS, Apakama DU, Bell EJ, Freeman R, Timsina P, and Klang E
- Subjects
- Humans, Licensure, Medical, Clinical Competence, United States, Education, Medical, Undergraduate methods, Educational Measurement methods
- Abstract
This study was designed to assess how different prompt engineering techniques, specifically direct prompts, Chain of Thought (CoT), and a modified CoT approach, influence the ability of GPT-3.5 to answer clinical and calculation-based medical questions, particularly those styled like the USMLE Step 1 exams. To achieve this, we analyzed the responses of GPT-3.5 to two distinct sets of questions: a batch of 1000 questions generated by GPT-4, and another set comprising 95 real USMLE Step 1 questions. These questions spanned a range of medical calculations and clinical scenarios across various fields and difficulty levels. Our analysis revealed that there were no significant differences in the accuracy of GPT-3.5's responses when using direct prompts, CoT, or modified CoT methods. For instance, in the USMLE sample, the success rates were 61.7% for direct prompts, 62.8% for CoT, and 57.4% for modified CoT, with a p-value of 0.734. Similar trends were observed in the responses to GPT-4 generated questions, both clinical and calculation-based, with p-values above 0.05 indicating no significant difference between the prompt types. The conclusion drawn from this study is that the use of CoT prompt engineering does not significantly alter GPT-3.5's effectiveness in handling medical calculations or clinical scenario questions styled like those in USMLE exams. This finding is crucial as it suggests that performance of ChatGPT remains consistent regardless of whether a CoT technique is used instead of direct prompts. This consistency could be instrumental in simplifying the integration of AI tools like ChatGPT into medical education, enabling healthcare professionals to utilize these tools with ease, without the necessity for complex prompt engineering., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
11. Development and Validation of a Deep Learning Classifier Using Chest Radiographs to Predict Extubation Success in Patients Undergoing Invasive Mechanical Ventilation.
- Author
-
Tandon P, Nguyen KA, Edalati M, Parchure P, Raut G, Reich DL, Freeman R, Levin MA, Timsina P, Powell CA, Fayad ZA, and Kia A
- Abstract
The decision to extubate patients on invasive mechanical ventilation is critical; however, clinician performance in identifying patients to liberate from the ventilator is poor. Machine Learning-based predictors using tabular data have been developed; however, these fail to capture the wide spectrum of data available. Here, we develop and validate a deep learning-based model using routinely collected chest X-rays to predict the outcome of attempted extubation. We included 2288 serial patients admitted to the Medical ICU at an urban academic medical center, who underwent invasive mechanical ventilation, with at least one intubated CXR, and a documented extubation attempt. The last CXR before extubation for each patient was taken and split 79/21 for training/testing sets, then transfer learning with k-fold cross-validation was used on a pre-trained ResNet50 deep learning architecture. The top three models were ensembled to form a final classifier. The Grad-CAM technique was used to visualize image regions driving predictions. The model achieved an AUC of 0.66, AUPRC of 0.94, sensitivity of 0.62, and specificity of 0.60. The model performance was improved compared to the Rapid Shallow Breathing Index (AUC 0.61) and the only identified previous study in this domain (AUC 0.55), but significant room for improvement and experimentation remains.
- Published
- 2024
- Full Text
- View/download PDF
12. Predicting Adult Hospital Admission from Emergency Department Using Machine Learning: An Inclusive Gradient Boosting Model.
- Author
-
Patel D, Cheetirala SN, Raut G, Tamegue J, Kia A, Glicksberg B, Freeman R, Levin MA, Timsina P, and Klang E
- Abstract
Background and Aim: We analyzed an inclusive gradient boosting model to predict hospital admission from the emergency department (ED) at different time points. We compared its results to multiple models built exclusively at each time point., Methods: This retrospective multisite study utilized ED data from the Mount Sinai Health System, NY, during 2015-2019. Data included tabular clinical features and free-text triage notes represented using bag-of-words. A full gradient boosting model, trained on data available at different time points (30, 60, 90, 120, and 150 min), was compared to single models trained exclusively at data available at each time point. This was conducted by concatenating the rows of data available at each time point to one data matrix for the full model, where each row is considered a separate case., Results: The cohort included 1,043,345 ED visits. The full model showed comparable results to the single models at all time points (AUCs 0.84-0.88 for different time points for both the full and single models)., Conclusion: A full model trained on data concatenated from different time points showed similar results to single models trained at each time point. An ML-based prediction model can use used for identifying hospital admission.
- Published
- 2022
- Full Text
- View/download PDF
13. Management of psoriasis with nutraceuticals: An update.
- Author
-
Raut G and Wairkar S
- Subjects
- Humans, Chronic Disease therapy, Dietary Supplements, Psoriasis diet therapy
- Abstract
Psoriasis is a chronic skin disorder that speeds up the life cycle of skin cells, typically on the surface of the skin. Additional skin cells form thick scales and red fixes which are awfully itchy and sometimes painful. Although there are many therapeutic systems available to get symptomatic relief, unfortunately replete cure for psoriasis is not yet reported. Moreover, poor treatment outcomes as well as high toxicity profile of drugs makes these therapies more inconvenient to treat psoriasis. In search of alternative and complementary therapy for this disease, the focus has been shifted to nutraceuticals, few of them were reported since ages. It includes vitamins, herbal extracts, phytochemicals and dietary supplements. In this review, the attempt has been made to highlight key nutraceuticals for better management of psoriasis. Supplementation of appropriate nutraceutical may improve the quality of patient's life and have positive impact on overall state of disease., (Copyright © 2018 Elsevier Ltd. All rights reserved.)
- Published
- 2018
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.