ISSN Approved Journal No: 2320-2882 | Impact factor: 7.97 | ESTD Year: 2013
Scholarly open access journals, Peer-reviewed, and Refereed Journals, Impact factor 7.97 (Calculate by google scholar and Semantic Scholar | AI-Powered Research Tool) , Multidisciplinary, Monthly, Indexing in all major database & Metadata, Citation Generator, Digital Object Identifier(DOI)
IJCRT Journal front page | IJCRT Journal Back Page |
Paper Title: Iot Based Icu Patient Monitoring System Automatic Sms Alert Using Gsm
Author Name(s): Shweta kumari, Krishna Samalla, Anjali Kokonda, Akhila Pallepogu, Gayathri Spurthi Jajula
Published Paper ID: - IJCRT2405117
Register Paper ID - 259399
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405117 and DOI :
Author Country : Indian Author, India, 501301 , Ghatkesar, 501301 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405117 Published Paper PDF: download.php?file=IJCRT2405117 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405117.pdf
Title: IOT BASED ICU PATIENT MONITORING SYSTEM AUTOMATIC SMS ALERT USING GSM
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b75-b81
Year: May 2024
Downloads: 44
E-ISSN Number: 2320-2882
Abstract : Integrating IoT technology has been crucial in modern healthcare for improving patient care and monitoring. This research presents a novel ICU patient monitoring system that utilizes the internet of things (IoT) to continuously monitor vital signs like temperature, humidity, pulse rate, and blood pressure in real-time. The system's data processing and collection is powered by Arduino microcontrollers, and its storage and analysis is made easy by the sophisticated cloud-based platform ThingSpeak. Medical practitioners may see and evaluate patient data in real-time using ThingSpeak's powerful analytics features. When anything out of the ordinary happens with your vitals, you may set up alerts and notifications to let the doctors know. In order to improve healthcare delivery efficiency and allow for remote monitoring, the system offers a user-friendly interface that can be accessed by online or mobile apps.
Licence: creative commons attribution 4.0
IOT, Thingspeak, Arduino microcontrollers, Remote monitoring, Cloud-based platform, Healthcare delivery efficiency.
Paper Title: KNOWLEDGE AND ATTITUDE REGARDING NABH DOCUMENTATION GUIDELINES AMONG NURSING STUDENTS IN SELECTED NURSING COLLEGES, GUWAHATI, ASSAM: A DESCRIPTIVE STUDY
Author Name(s): H. LALHMANGAIHZUALI, RESHMA BEGUM, SUMAN JOYTI DAS
Published Paper ID: - IJCRT2405116
Register Paper ID - 259313
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405116 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405116 Published Paper PDF: download.php?file=IJCRT2405116 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405116.pdf
Title: KNOWLEDGE AND ATTITUDE REGARDING NABH DOCUMENTATION GUIDELINES AMONG NURSING STUDENTS IN SELECTED NURSING COLLEGES, GUWAHATI, ASSAM: A DESCRIPTIVE STUDY
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b65-b74
Year: May 2024
Downloads: 48
E-ISSN Number: 2320-2882
BACKGROUND: Nurses engage in various activities from the time of a patient's admission to his or her discharge from the hospital, helping patients to meet their needs that also include the recording and reporting. Each of the activities done by the nurses and the condition of the patient should be documented properly as authentic and crucial evidence. Current health care system required that documentation ensures continuity of care, furnishes legal evidence of the process of care and supports evaluation of quality of patient care. National Accreditation Board for Hospitals and Healthcare Providers (NABH) is a constituent board of Quality Council of India (QCI), set up to establish and operate accreditation and other allied programs for healthcare organizations. The mission of NABH is to operate accreditation and allied programs in collaboration with stakeholders focusing on patient safety and quality of healthcare by adopting various national and international best practices. NABH is an Institutional Member as well as a Board member of the International Society for Quality in Health Care (ISQua) and on the board of the Asian Society for Quality in Healthcare (ASQua). Patient safety can be evaluated by mapping adverse events that occur in healthcare units. Studies done by Panesar et al. in 2015 have shown that 1-24 adverse incidents occur during every 100 consultations in the primary care context. A link between patient safety and inadequate documentation has previously been reported by studies examining documentation and adverse events in primary care. Andersson et al. in 2018, examined serious adverse events reports submitted by nurses in Swedish nursing homes to the Health and Social Care Inspectorate and found that a "lack of competence" and "incomplete or lack of documentation" were the two most common factors that contributed to adverse events.
Licence: creative commons attribution 4.0
KNOWLEDGE AND ATTITUDE REGARDING NABH DOCUMENTATION GUIDELINES AMONG NURSING STUDENTS IN SELECTED NURSING COLLEGES, GUWAHATI, ASSAM: A DESCRIPTIVE STUDY
Paper Title: A Review On Antibacterial Herbal Face Pack
Author Name(s): Miss. Priya M.Dandekar,, Miss. Mayuri G.Zore, Mr.Amol G. Jadhao, Mr. Shivam R. Ingle, Miss. Neha G.Deshmukh
Published Paper ID: - IJCRT2405115
Register Paper ID - 259046
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405115 and DOI :
Author Country : Indian Author, India, 443302 , chikhali, 443302 , | Research Area: Pharmacy All Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405115 Published Paper PDF: download.php?file=IJCRT2405115 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405115.pdf
Title: A REVIEW ON ANTIBACTERIAL HERBAL FACE PACK
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Pharmacy All
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b51-b64
Year: May 2024
Downloads: 56
E-ISSN Number: 2320-2882
Abstract Natural remedies are more acceptable in the belief that they are safer with fewer side effects than the synthetic ones. Herbal formulations have growing demand in the world market. The objective of this work is to formulate and evaluate a cosmetic preparation polyherbal face pack made from herbal ingredients. Kaoline, tragacanth, orange peel powder, neem powder, chandan powder, aloe juice powder, turmeric powder , Fullers earth and Cicer arientinum Powder were procured from the local market in dried, powdered and then passed through sieve no 80, mixed thoroughly prepared and evaluated for its organoleptic, physico-chemical and microscopical characters . The dried powder of combined form had passable flow property which is suitable for a face pack. Herbal face packs or masks are used to stimulate blood circulation, rejuvenates and help to maintain the elasticity of the skin and remove dirt from skin pores. It is a very good attempt to establish the herbal face pack containing different powders of plants. The advantage of herbal cosmetics is their non-toxic nature, reduce the allergic reactions and time tested usefulness of many ingredients. Thus in the present work, we found good properties of the face packs and further optimization studies are required on this study to find the useful benefits of face packs on human, use as cosmetic product.
Licence: creative commons attribution 4.0
Keywords:- Cosmetic, Face Pack, Herbal, Ingredients, Natural Formulation.
Paper Title: Spatiotemporal Fusion Networks For Human Behavior Recognition :Enhancing Channel Attention And Feature Extraction
Author Name(s): K. VENU, K. NAVEEN
Published Paper ID: - IJCRT2405114
Register Paper ID - 259273
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405114 and DOI :
Author Country : Indian Author, India, 517126 , Chittoor, 517126 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405114 Published Paper PDF: download.php?file=IJCRT2405114 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405114.pdf
Title: SPATIOTEMPORAL FUSION NETWORKS FOR HUMAN BEHAVIOR RECOGNITION :ENHANCING CHANNEL ATTENTION AND FEATURE EXTRACTION
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b40-b50
Year: May 2024
Downloads: 39
E-ISSN Number: 2320-2882
This project pioneers a novel method for human behavior recognition, introducing two innovative channel attention modules: the space-time interaction and depth separable convolution modules. Utilizing convolutional neural networks (CNNs), renowned for image and video processing, a multi-scale CNN approach segments behavior videos, applies low-rank learning for behavior information extraction, and integrates findings along the time axis for holistic comprehension. This method not only simplifies information extraction but also adapts flexibly to diverse network structures, enhancing recognition accuracy while minimizing computational complexity. Further, by amalgamating CNN, GRU, and Bidirectional algorithms, the model achieves superior accuracy with just 1000 parameters, outperforming existing algorithms. This hybrid approach optimizes training features, securing even higher accuracy in behavior recognition.
Licence: creative commons attribution 4.0
Paper Title: SAFE AND COST-EFFICINT BLOCKCHAIN ENABLES FRAMEWORK SECURE IOT SOFTWARE UPDATES
Author Name(s): M.Prathibha, Mr. K. Niranjan
Published Paper ID: - IJCRT2405113
Register Paper ID - 259121
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405113 and DOI :
Author Country : Indian Author, India, 517126 , Chittoor, 517126 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405113 Published Paper PDF: download.php?file=IJCRT2405113 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405113.pdf
Title: SAFE AND COST-EFFICINT BLOCKCHAIN ENABLES FRAMEWORK SECURE IOT SOFTWARE UPDATES
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b30-b39
Year: May 2024
Downloads: 36
E-ISSN Number: 2320-2882
This project introduces a groundbreaking solution to the security vulnerabilities encountered by resource-limited Internet of Things (IoT) devices during software updates. Traditional methods are fraught with security risks and inefficiencies due to multiple data transfers. The proposed blockchain-based framework revolutionizes this process by leveraging Ciphertext-Policy Attribute-Based Encryption (CP-ABE) for cryptographic tasks, custom authorization policies for enhanced security, and smart contracts to ensure secure delivery and payment. By storing encrypted software update blocks across multiple IPFS nodes and recording their addresses on the blockchain, the system mitigates the risk of a single point of failure. This innovative approach not only guarantees secure, efficient, and auditable software updates but also significantly bolsters IoT device security compared to conventional methods.
Licence: creative commons attribution 4.0
Paper Title: Automated Pneumonia Detection From Chest X-Ray Images Using Computer Vision
Author Name(s): Nikhil P, Pooja G, Pavithra S, Sreeji S
Published Paper ID: - IJCRT2405112
Register Paper ID - 259309
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405112 and DOI :
Author Country : Indian Author, India, 680588 , Thrissur, 680588 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405112 Published Paper PDF: download.php?file=IJCRT2405112 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405112.pdf
Title: AUTOMATED PNEUMONIA DETECTION FROM CHEST X-RAY IMAGES USING COMPUTER VISION
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b22-b29
Year: May 2024
Downloads: 32
E-ISSN Number: 2320-2882
Pneumonia is the leading cause of death and morbidity in children, and early and accurate diagnosis is essential for timely intervention. In our project, we solve the challenge of separating chest and lung x-rays. To achieve this, we use the power of neural network (CNN) and state-of-the-art transformers. Our method involves the use of a pre-trained CNN model and Vision Transformer to extract complex features from X-ray images, allowing us to identify transformation patterns and defect. We carefully preprocessed the children's chest X-ray image database to ensure that the information was complete and balanced. We have implemented the most efficient and effective testing methods to reduce translation time and cost and improve early detection of childhood pneumonia. Our system is accurate and effective in classifying lung diseases in children; It demonstrates the potential of deep learning and visual interpretation to improve doctors' ability to quickly and accurately diagnose life-threatening diseases.
Licence: creative commons attribution 4.0
Pneumonia , CNN, Vision Transformer, X-ray
Paper Title: Social Sentinel: Predicting national Self-Harm Trends Trough Social Networks
Author Name(s): D.Gayathri, Mr.G.Lokesh
Published Paper ID: - IJCRT2405111
Register Paper ID - 259125
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405111 and DOI :
Author Country : Indian Author, India, 517126 , Chittoor, 517126 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405111 Published Paper PDF: download.php?file=IJCRT2405111 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405111.pdf
Title: SOCIAL SENTINEL: PREDICTING NATIONAL SELF-HARM TRENDS TROUGH SOCIAL NETWORKS
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b11-b21
Year: May 2024
Downloads: 40
E-ISSN Number: 2320-2882
Since this study delves into the profound impacts of self-harm on individuals and economies, emphasizing the inadequacy of traditional statistics in tracking national trends. Introducing the innovative FAST framework, it harnesses social media data to forecast self-harm incidents. By training language models to discern mental health signals from online messages, this method transforms them into insightful time series data. Using machine learning regressors, the framework demonstrated superior forecasting accuracy. In a Thai case study, it surpassed conventional methods by over 40%. Additionally, incorporating the Decision Tree algorithm enhanced accuracy, reducing Mean Absolute Error compared to other algorithms. This research pioneers a transformative approach to predict nationwide self-harm trends and potentially forecast socioeconomic factors using social media analytics.
Licence: creative commons attribution 4.0
Self-Harm, Social Networks
Paper Title: Mapping cyber threats: Constructing an APT Knowledge graph from OSCTI
Author Name(s): K. Snehalatha, Dr. R. Yamuna
Published Paper ID: - IJCRT2405110
Register Paper ID - 259116
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405110 and DOI :
Author Country : Indian Author, India, 517126 , Chittoor, 517126 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405110 Published Paper PDF: download.php?file=IJCRT2405110 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405110.pdf
Title: MAPPING CYBER THREATS: CONSTRUCTING AN APT KNOWLEDGE GRAPH FROM OSCTI
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: b1-b10
Year: May 2024
Downloads: 45
E-ISSN Number: 2320-2882
as the project pioneers the use of open-source cyber threat intelligence (OSCTI) to bolster network security via a cybersecurity knowledge graph. This innovative graph streamlines access to a range of threat information, empowering informed decision-making. Leveraging attribution technology, the initiative detects and pinpoints advanced persistent threats (APTs) across diverse attack scenarios. Integrating cutting-edge knowledge graph technology with research on cyber threat attribution, the team introduces CSKG4APT, a robust cybersecurity platform. This platform harnesses ontology theory to craft an APT-centric knowledge graph model and deploys deep learning algorithms for knowledge extraction and updating. By introducing effective APT attack attribution techniques, the project amplifies network defense strategies, enabling proactive defense against rapidly evolving threats.
Licence: creative commons attribution 4.0
Cybersecurity, deep learning algorithms
Paper Title: Generative AI in Medical Field
Author Name(s): Prathyush s panicker, Akash v, Akash R, Dhrupath Rajeev
Published Paper ID: - IJCRT2405109
Register Paper ID - 259294
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405109 and DOI :
Author Country : Indian Author, India, 560064 , Bangalore, 560064 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405109 Published Paper PDF: download.php?file=IJCRT2405109 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405109.pdf
Title: GENERATIVE AI IN MEDICAL FIELD
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: a987-a997
Year: May 2024
Downloads: 82
E-ISSN Number: 2320-2882
Generative AI transforms healthcare by enhancing medical imaging, accelerating drug discovery, and enabling personalized medicine. Challenges include ethics, biases, and interpretability. Future directions involve customized models and regulatory frameworks. Responsible adoption is crucial for realizing generative AI's potential. In the realm of medical imaging, generative AI reconstructs high-resolution images from low-quality scans, aiding radiologists in precise diagnoses. Additionally, it synthesizes realistic images of organs and tissues, providing valuable visual information. Personalized medicine optimization involves analyzing patient data to tailor interventions. Disease progression prediction and individualized drug dosages improve patient outcomes. While generative AI holds immense promise, addressing ethical concerns, mitigating biases, and ensuring interpretability is essential. Collaborative efforts and thoughtful regulation will drive responsible adoption and transformative impact in healthcare.
Licence: creative commons attribution 4.0
generative ai, artificial intelligence, machine learning,healthcare,medical,chat gpt
Paper Title: REMOTE HEALTH CARE MONITORING SYSTEM USING IOT
Author Name(s): TANJORE RAMESH CHANDNI, SIMHADRI TARYNSAI, VALLURI VENKATA VARUN KUMAR, VENIGALLA NAGESWARA PRASAD, SHAIK SAADAT
Published Paper ID: - IJCRT2405108
Register Paper ID - 259259
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRT2405108 and DOI :
Author Country : Indian Author, India, 522002 , GUNTUR, 522002 , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2405108 Published Paper PDF: download.php?file=IJCRT2405108 Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2405108.pdf
Title: REMOTE HEALTH CARE MONITORING SYSTEM USING IOT
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 5 | Year: May 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 5
Pages: a978-a986
Year: May 2024
Downloads: 38
E-ISSN Number: 2320-2882
The Internet of Things (IoT) has revolutionized healthcare by facilitating the development of innovative solutions for remote health monitoring. This paper introduces an IoT-based health monitoring system tailored to address the challenges of monitoring vital health parameters, particularly in rural or remote areas. The system incorporates a comprehensive array of sensors, including the MAX30100 for Blood Pressure Monitoring (BPM) and Blood Oxygen Saturation (SpO2), the DS18B20 temperature sensor for precise temperature monitoring, a DHT11 sensor for humidity measurement, and a GPS module for accurate location tracking. These sensors are seamlessly integrated into a dedicated PCB board, optimizing space and efficiency. Data collected from the sensors are wirelessly transmitted to a centralized server through the Blynk IoT platform, enabling real- time analysis and visualization. An intuitive user interface empowers healthcare providers and patients to monitor health parameters and receive alerts promptly in case of deviations from normal values. Rigorous testing and validation ensure the system's reliability and accuracy across various environmental conditions. This IoT-based health monitoring system holds significant promise for enhancing. The Internet of Things (IoT) has revolutionized healthcare by facilitating the development of innovative solutions for remote health monitoring. This paper introduces an IoT-based health monitoring system tailored to address the challenges of monitoring vital health parameters, particularly in rural or remote areas. The system incorporates a comprehensive array of sensors, including the MAX30100 for Blood Pressure Monitoring (BPM) and Blood Oxygen Saturation (SpO2), the DS18B20 temperature sensor for precise temperature monitoring, a DHT11 sensor for humidity measurement, and a GPS module for accurate location tracking. These sensors are seamlessly integrated into a dedicated PCB board, optimizing space and efficiency. Data collected from the sensors are wirelessly transmitted to a centralized server through the Blynk IoT platform, enabling real- time analysis and visualization. An intuitive user interface empowers healthcare providers and patients to monitor health parameters and receive alerts promptly in case of deviations from normal values. Rigorous testing and validation ensure the system's reliability and accuracy across various environmental conditions. This IoT-based health monitoring system holds significant promise for enhancing.
Licence: creative commons attribution 4.0
iot devices, internet connectivity, cloud platform, data security, mobile or web application, data analytics, alerting mechanisam, integration with electronic health records.