Emergency Patient Reader
- Bangladesh
- Hybrid of for-profit and nonprofit
Many of the patients who come to the emergency department in our country die without treatment. Because many patients are not seen in intensive care. Neglect of the patient in the emergency department. In the emergency department, patients are treated equally regardless of the severity of the problem or the severity of the problem. As a result, more critical patients die due to lack of proper treatment at the right time due to less importance. Also, we lack sufficient capacity to diagnose the type of problems of patients who come to the emergency department for treatment.
Different types of patients come to the emergency department with different diseases. The degree of the patient's disease is observed on the face of the patient. We will determine the extent of the patient's disease from the picture of the patient's face, he will suggest emergency treatment measures accordingly.
When you open the app, the camera will automatically take a picture and send it to the server and the server will propose some objects accordingly. If you select the proposed object, the result will come accordingly.
After the tracked image goes to the server, it will analyze the current image and compare it with the stored image and make a decision accordingly. By analyzing the patient's image, the system will tell what is the disease and the extent of the disease. Treatment will start accordingly.
Case-1 :
If a patient is admitted to the medical emergency department due to an accident /in fact, if medical treatment could have been started according to the degree of the patient's accident, many patients would not have died due to lack of proper treatment. Many times it happens that the patient's condition worsens after some time passes before the treatment is started.
Solution:
The way our solution works is that when a patient comes to the hospital with an accident, they will first take a picture of their face. After that, the patient's current condition can be known by determining the level of pain by analyzing the data obtained from the image. By that, treatment can be started accordingly. Hope it will reduce the death rate of patients due to lack of treatment soon.
Case - 2 :
Many patients of the village come to the hospital with chest pain. But it takes time to determine whether their chest pain is gastric or heart, and many patients die before treatment begins. Heart patients need time to be confirmed. And due to negligence of the hospital and in many cases patients do not get proper medical care.
Solution:
As soon as the patient arrives at the hospital, we can quickly confirm the cause of the patient's chest pain by taking his picture and analyzing the picture. First aid can be started accordingly. By doing this, the death rate of the patient due to lack of treatment will be greatly reduced. By doing this, the death rate of the patient due to lack of treatment will be greatly reduced.
Case-3:
Many patients of the village come to the hospital with abdominal pain. Belly pain can be of different types. It usually takes time to start treatment for stomach pain patients. Because it is not seen seriously. But stomach pain can be serious. Such as appendicitis pain, gas pain, ulcer pain and cancer pain, various pains including food related pain.
Solution:
When the patient arrives at the hospital, his photograph will be taken first. The system analyzes the images to determine the level of pain and after that the first aid will be started. As a result, the patient mortality rate will be greatly reduced due to lack of treatment or negligent treatment.
Case-4 :
Pregnancy Pain: Many women in the village die prematurely due to the lack of accurate diagnosis of labor pain and lack of accurate diagnosis of labor pain and general pain.
Solution:
System analysis will take pictures of the patient during labor and tell if the pain is normal or not. First aid can then be started. Without treatment, the mortality rate of pregnant mothers will decrease due to lack of treatment.
Case-5:
Abdominal pain: Diarrhea is a common disease in our country. We also take diarrheal diseases for granted. As a result, in many cases, the patient dies due to lack of consciousness.
Solution :
By taking pictures of the patient and analyzing the pictures.
so on.
Case - 6 :
Dengue: Common dengue is causing a serious condition. Many patients have already died due to dengue. Diagnosing a dengue patient and determining the extent of the patient's disease and starting treatment accordingly are time-consuming, often leading to undesirable situations.
Solution:
It can be assumed that the death rate will decrease if dengue patients are identified by taking pictures of the patient and analyzing the system images and starting the primary treatment accordingly.
Case - 7 :
Corona: All of a sudden the novel virus Corona has already started a commotion all over the world and created panic all over the world and thousands of people died. Millions of people have been affected. We can also work with this patient. There are opportunities to work here too.
Solution :
By taking pictures of the patient and analyzing the pictures, the level of pain can be determined and the primary care / treatment can be initiated.
Case-8:
Drug addiction: Drug addiction has become an epidemic today. Rapid identification of drug addicts and initiation of treatment accordingly.
Solution:
By taking the picture of the patient, the system analysis will tell how much the patient is addicted to drugs. And accordingly first aid can be started.
Case - 9 :
Kidney disease has also taken a terrible shape in our country. Many times we don't realize that I am a kidney patient. It takes a lot of time to identify kidney disease and know the extent of damage. Many people die due to lack of proper diagnosis due to unawareness of kidney disease.
Solution:
By taking the picture of the patient, the system will analyze the picture and the system will tell what level of problem the patient's kidney has. Then first aid can be started.
Case - 10 :
The number of liver related patients in our country is high. But due to lack of proper knowledge many people die of liver disease every year in our country.
Solution:
By taking pictures of the patient, the system will analyze the condition of the liver and the first treatment can be started.
Case - 11 :
Stroke : Many village patients come to the hospital with headache or mini / mind / massive stroke and in many cases come to the hospital late. It takes a long time for them to start treatment. It also takes a long time to confirm that a patient has had a stroke. In this field, due to the negligence of the patient's relatives and the doctor, in many cases the patient dies due to lack of proper treatment.
Solution:
By taking the picture of the patient, the system will know the condition of the patient and then the first treatment can be started.
It sounds like you're describing a significant initiative focused on leveraging AI to enhance emergency department (ED) care in hospitals, with the ultimate goal of improving healthcare outcomes and reducing mortality rates, particularly in regions like Bangladesh. Here are some possible additional details and steps you might consider:
Current AI Solutions: Detail the specific AI solutions and technologies your team has developed since 2018. Discuss how these solutions utilize deep learning and other AI techniques to address various aspects of emergency care, such as patient triage, diagnosis support, resource allocation, or predictive analytics for patient outcomes.
Technological Expertise: Highlight your team's technological expertise and track record in AI research and development. This could include previous projects, publications, patents, or collaborations that demonstrate your proficiency in applying AI to healthcare challenges.
Global Impact: Emphasize your ambition to make a global impact on emergency medical services, extending beyond your local context to hospitals worldwide, including those in Bangladesh. Explain the rationale behind this global approach and how it aligns with your vision for improving healthcare equity and access on a global scale.
Comprehensive Contribution: Outline your strategy for making a comprehensive contribution to emergency department medical services. This might involve developing new AI algorithms or tools tailored to the unique needs and challenges of emergency care settings, as well as collaborating with healthcare providers, researchers, and policymakers to implement these solutions effectively.
Social Impact: Articulate the potential social impact of your initiative, particularly in terms of reducing premature deaths, preventing fatalities due to misdiagnosis or inappropriate treatment, and lowering overall mortality rates associated with untreated medical conditions. Provide quantitative targets or metrics to measure the success of your intervention in improving socio-medical outcomes.
Collaborative Partnerships: Discuss your approach to collaboration and partnerships with stakeholders in the healthcare ecosystem, including hospitals, government agencies, NGOs, and academic institutions. Highlight how these partnerships can facilitate knowledge exchange, data sharing, and the co-development of AI-enabled solutions for emergency care.
Implementation and Scale-up: Describe your plans for implementing and scaling up your AI solutions in real-world healthcare settings, including considerations for deployment, integration with existing workflows, staff training, and ongoing support and maintenance.
Ethical and Regulatory Considerations: Address the ethical and regulatory challenges associated with deploying AI in healthcare, such as patient privacy, algorithm bias, clinical validation, and compliance with local regulations and standards. Explain how your team is approaching these challenges to ensure the responsible and ethical use of AI in emergency care.
By incorporating these additional details, you can provide a more comprehensive overview of your AI-based initiative and its potential to make a meaningful impact on emergency department medical services worldwide, including in Bangladesh.
- Ensure health-related data is collected ethically and effectively, and that AI and other insights are accurate, targeted, and actionable.
- 3. Good Health and Well-Being
- Concept
Our initiative addresses a pressing global health concern that demands a multifaceted solution. Through the utilization of deep learning systems, we aim to revolutionize the way we approach this issue. Deep learning, with its ability to analyze vast amounts of data and extract meaningful insights, presents a promising avenue for devising innovative solutions to complex health problems.
However, addressing such challenges requires more than just technological prowess. It demands a collaborative effort that encompasses a diverse range of expertise, including financial acumen, technological proficiency, mentorship, and an understanding of market dynamics. By leveraging the collective knowledge and resources across these domains, we can develop holistic solutions that are not only effective but also sustainable in the long term.
Recognizing the importance of collaboration and shared expertise, we have chosen to engage with the MIT Solve platform. MIT Solve provides a unique ecosystem that fosters collaboration, innovation, and entrepreneurship to address some of the world's most pressing challenges. Through our partnership with MIT Solve, we aim to tap into a global network of innovators, mentors, and investors who can provide valuable insights and support to further refine and implement our solution.
At the heart of our endeavor lies a commitment to making a tangible impact on global health outcomes. By reducing mortality rates and improving healthcare outcomes, our solution has the potential to transform the lives of millions of individuals worldwide. Through our collaboration with MIT Solve and the collective efforts of all stakeholders involved, we are confident in our ability to drive meaningful change and address the root causes of health disparities on a global scale. Together, we can pave the way towards a healthier and more equitable future for all.
MIT Solve stands as a beacon of innovation and collaboration on the global stage, renowned for its unwavering commitment to addressing pressing societal challenges through cutting-edge research and development. With a track record of tackling a diverse array of contemporary issues, MIT Solve has earned widespread respect and recognition for its contributions to shaping a better world.
One of the key pillars of MIT Solve's mission is its dedication to fostering breakthrough solutions that have a meaningful and immediate impact on communities worldwide. Through its extensive research and development efforts, MIT Solve continuously explores innovative approaches to address a multitude of pressing issues, spanning healthcare, education, sustainability, and beyond.
Central to MIT Solve's approach is its holistic support ecosystem, which encompasses funding opportunities, mentorship programs, and technological resources aimed at empowering innovators to bring their ideas to fruition. By leveraging this comprehensive support framework, MIT Solve not only nurtures promising innovations but also catalyzes their scalability and impact on a global scale.
Moreover, MIT Solve's efforts have transcended geographical boundaries, fostering a vibrant and interconnected community of innovators, mentors, and stakeholders from every corner of the globe. This diverse and collaborative network serves as a fertile ground for knowledge exchange, cross-disciplinary collaboration, and collective problem-solving, enabling innovators to draw upon a wealth of expertise and resources as they navigate the complexities of addressing societal challenges.
By applying for MIT Solve's support, we seek to harness the full spectrum of benefits offered by this esteemed organization. Through access to funding, mentorship, and technological support, we aim to accelerate the development and implementation of breakthrough solutions that ensure the immediate care of patients presenting to hospital emergency departments.
With MIT Solve's backing, we are confident in our ability to not only innovate but also drive tangible and sustainable impact in healthcare delivery. By working collaboratively within the MIT Solve community, we aspire to pioneer transformative approaches that enhance patient outcomes, alleviate healthcare burdens, and ultimately, save lives on a global scale. Together, we can turn the vision of immediate and effective patient care into a reality, ushering in a new era of healthcare innovation and accessibility for all.
- Business Model (e.g. product-market fit, strategy & development)
- Financial (e.g. accounting practices, pitching to investors)
- Monitoring & Evaluation (e.g. collecting/using data, measuring impact)
- Technology (e.g. software or hardware, web development/design)
Emergency services in hospitals are perpetually inundated, leading to prolonged wait times for critical patients in need of urgent care. Recognizing this pressing issue, our primary objective is to streamline and expedite treatment processes within the emergency department through innovative solutions. By implementing our comprehensive approach, we aim to swiftly identify patients' medical needs upon their arrival, facilitating prompt initiation of appropriate treatment protocols.
Our solution is distinguished by its ability to swiftly triage patients, prioritize critical cases, and allocate resources efficiently. Leveraging advanced technologies such as artificial intelligence and data analytics, we can rapidly assess patients' conditions, enabling healthcare providers to make well-informed decisions in a time-sensitive environment. Moreover, our system integrates seamlessly with existing hospital infrastructure, minimizing disruptions and enhancing overall workflow efficiency.
We firmly believe that our solution represents a paradigm shift in emergency healthcare delivery. By significantly reducing treatment delays and optimizing resource utilization, we anticipate making a profound impact on patient outcomes and satisfaction levels. Our vision extends beyond individual institutions – we aspire to revolutionize emergency care practices on a global scale.
Through strategic partnerships and widespread adoption, we envision our solution becoming a cornerstone of emergency medical services worldwide. By addressing the longstanding challenges faced by healthcare systems, we are poised to usher in a new era of unprecedented success and innovation in the healthcare sector, ultimately saving lives and improving quality of care for patients everywhere.
An innovative approach to addressing the challenges faced in emergency departments. Here's a more detailed breakdown of how such a system might work:
Patient Arrival and Initial Assessment: When a patient arrives at the emergency department, they are immediately directed to a designated area equipped with the necessary technology for initial assessment. This area could be staffed by trained healthcare professionals who are familiar with the system.
Facial Recognition and Biometric Analysis: The system employs facial recognition technology to identify the patient. Once the patient is identified, the system captures a picture of their face. This picture is then analyzed using biometric algorithms to detect any visible signs of distress or illness.
Medical Database Integration: The system integrates with the hospital's electronic medical records (EMR) database and other relevant databases containing patient health history, medical conditions, allergies, and any previous visits to the hospital.
AI-powered Diagnosis: Using artificial intelligence (AI) and machine learning algorithms, the system analyzes the patient's facial expressions, skin color, pupil dilation, and other visible indicators of distress or illness. These algorithms are trained on a vast dataset of medical images and patient outcomes to accurately assess the severity of the patient's condition.
Immediate Triage and Treatment: Based on the analysis, the system assigns a priority level to the patient's case and recommends immediate action. For patients with critical conditions, such as cardiac arrest or severe trauma, the system triggers an alert to the medical staff, prompting them to provide immediate medical intervention.
Real-time Monitoring and Feedback: Throughout the patient's stay in the emergency department, the system continues to monitor their vital signs and condition, providing real-time feedback to the medical staff. This feedback includes updates on the patient's status, changes in vital signs, and any interventions or treatments administered.
Communication and Collaboration: The system facilitates communication and collaboration among healthcare providers, allowing them to share information, coordinate care, and make informed decisions quickly. This includes providing access to medical images, test results, and other relevant data in real-time.
Privacy and Security Measures: To ensure patient confidentiality and compliance with privacy regulations, the system employs robust encryption protocols and access controls. Patient data is securely stored and transmitted, with strict protocols in place to prevent unauthorized access or data breaches.
By implementing such a system, hospitals can streamline the triage process, reduce the time to diagnosis and treatment, and ultimately improve patient outcomes, particularly in critical and time-sensitive situations.
Data Collection Process:
- Develop a protocol for capturing facial images of patients who arrive at hospital emergency departments. This may involve setting up cameras or mobile devices in designated areas.
- Ensure compliance with privacy regulations such as HIPAA (Health Insurance Portability and Accountability Act) to protect patient confidentiality.
- Train staff members on the proper procedure for capturing facial images, ensuring sensitivity to patient privacy and comfort.
Pain Level Analysis:
- Utilize facial recognition technology and image analysis algorithms to detect facial expressions indicative of pain or distress.
- Develop a pain assessment scale or algorithm that correlates facial expressions with pain levels, taking into account factors such as facial grimacing, furrowed brows, and clenched jaws.
- Validate the accuracy of the pain assessment algorithm through pilot studies and clinical trials involving a diverse range of patients with varying levels of pain.
Data Integration and Analysis:
- Integrate the pain level data collected from facial images with existing electronic medical records (EMR) systems and patient intake forms.
- Aggregate and analyze the pain level data along with other relevant metrics, such as wait times, triage category, medical interventions, and patient outcomes.
- Use statistical analysis and data visualization techniques to identify patterns, trends, and correlations in the data, such as associations between pain levels and time to treatment.
Service Improvement Strategies:
- Identify bottlenecks and inefficiencies in the emergency department workflow that contribute to delays in patient care.
- Implement targeted interventions and process improvements to address identified issues, such as optimizing triage protocols, reallocating resources, or streamlining diagnostic procedures.
- Monitor the impact of these interventions on key performance indicators, such as wait times, patient satisfaction scores, and clinical outcomes.
- Iterate on the improvement strategies based on ongoing data analysis and feedback from frontline staff and patients.
Continuous Monitoring and Evaluation:
- Establish regular monitoring and reporting mechanisms to track the performance of the pain level analysis system and the effectiveness of service improvement initiatives.
- Solicit feedback from healthcare providers, patients, and other stakeholders to assess the usability, accuracy, and impact of the system on patient care.
- Continuously refine and optimize the system and service delivery processes based on feedback and performance metrics, ensuring ongoing quality improvement.
By systematically analyzing the pain level data and its relationship to service delivery metrics, hospitals can identify opportunities for enhancing the quality and efficiency of care in their emergency departments, ultimately leading to better outcomes for patients.
Deep Learning for Image Capture:
- Develop deep learning algorithms trained on vast datasets of facial images to accurately capture pictures of patients as they arrive at hospital emergency departments.
- Utilize convolutional neural networks (CNNs) or similar architectures to detect and extract facial features with high precision, even in varying lighting conditions and angles.
- Implement real-time image processing techniques to ensure fast and reliable image capture without causing delays in the patient intake process.
Deep Learning for Pain Level Analysis:
- Train deep learning models to analyze the captured facial images and accurately assess the pain levels of patients.
- Leverage state-of-the-art deep learning architectures, such as recurrent neural networks (RNNs), convolutional neural networks (CNNs), or transformer models, to learn complex patterns and correlations between facial expressions and pain perception.
- Fine-tune the models on annotated datasets of facial expressions depicting varying levels of pain intensity, ensuring robust performance across a wide range of pain presentations.
Real-time Decision Support:
- Integrate the AI-powered pain level analysis module into the hospital's existing infrastructure, allowing for seamless integration with electronic medical records (EMR) systems and clinical workflows.
- Develop decision support tools that provide real-time feedback to healthcare providers based on the AI-generated pain assessments, helping guide triage decisions and prioritize patient care accordingly.
- Implement alerts and notifications to flag cases where patients exhibit high levels of pain or distress, ensuring prompt attention and intervention by medical staff.
Continuous Learning and Improvement:
- Establish mechanisms for continuous learning and improvement of the AI models over time.
- Collect feedback from healthcare providers and patients on the accuracy and usability of the AI-based pain assessment system, using this feedback to iteratively refine and enhance the models.
- Implement strategies for data augmentation, model retraining, and algorithm updates to adapt to evolving patient populations, medical practices, and technological advancements.
Ethical Considerations and Bias Mitigation:
- Address ethical considerations surrounding the use of AI in healthcare, including issues related to patient consent, privacy, and algorithmic bias.
- Implement rigorous data governance protocols to ensure the responsible and ethical use of patient data in model training and validation.
- Employ techniques such as data anonymization, differential privacy, and fairness-aware training to mitigate biases and ensure equitable treatment for all patients, regardless of demographic factors.
By harnessing the power of AI-based deep learning technology, your solution can offer accurate, efficient, and personalized care to patients in hospital emergency departments, leading to improved outcomes and enhanced patient experiences.
- A new application of an existing technology
- Artificial Intelligence / Machine Learning
- Bangladesh
- United States
1. Md. Mizanur Rahman
2. Md Munir Uddin Ahmed
3. Dr. A.K.M Fazlul Haque
4. Samia Akhtar
5. Anamul Hasan
6. Mustofa Kamal
7. Khalid Saifullah Fuad
8. Md. Shamim Khan
We have been working on this solution since 2016. We are working on various case studies.
Our team comprises highly skilled individuals, each excelling in their respective fields. These members have consistently demonstrated exceptional abilities, showcasing their expertise and dedication. Operating within an agile methodology framework, our team thrives on seamless collaboration, leveraging collective strengths to achieve our goals efficiently.
We have cultivated an environment where innovative ideas flourish, supported by open communication and mutual respect among team members. Our commitment to excellence drives us to continually raise the bar, ensuring that our performance remains at the forefront of our industry.
As we look to the future, we are optimistic about the continued success of our team. We anticipate welcoming new members who will contribute their unique talents and perspectives, enriching our collective expertise and propelling us even further towards our objectives. Together, we are poised to maintain our high standards of performance and achieve greater milestones in the days ahead.
Our ambition is to introduce our solution on a global scale, reaching individuals and healthcare providers worldwide. To facilitate widespread adoption, we have devised a pricing strategy that prioritizes accessibility and affordability.
Initially, we propose a nominal fee of $1 per patient, ensuring that our solution remains accessible to healthcare providers of all sizes, from large hospitals to small clinics. This pricing model reflects our commitment to democratizing access to quality healthcare solutions, particularly in underserved regions where affordability can be a barrier to adoption.
However, we recognize that as our platform evolves and expands its capabilities, our pricing structure may need to adapt accordingly. We remain flexible and responsive to market dynamics, ready to adjust our pricing model to best meet the needs of our users while sustaining the growth and development of our solution.
Ultimately, our goal is not just to generate revenue, but to make a meaningful impact on healthcare outcomes worldwide. By offering an affordable and scalable solution, we aim to empower healthcare providers to deliver better care to their patients, regardless of geographical or economic constraints. Our revenue model reflects this broader mission, prioritizing accessibility and value creation above all else.
- Organizations (B2B)
Our strategy plan:
Year 1: Fundraising and Project Initiation
- Conduct thorough market research to identify potential investors and funding opportunities.
- Develop a comprehensive business plan outlining the project's objectives, target market, and revenue model.
- Launch fundraising campaigns leveraging various channels such as crowdfunding platforms, venture capital firms, and grants.
- Assemble a team of experts across diverse fields including healthcare, technology, and business development.
- Begin development work on the Minimum Viable Product (MVP) to showcase the core functionalities of the solution.
Year 2: MVP Development and Testing
- Complete the development of the MVP, focusing on key features and functionalities essential for addressing the target market's needs.
- Conduct rigorous testing and gather feedback from early adopters to refine and enhance the MVP.
- Establish partnerships with healthcare providers and organizations to facilitate pilot testing and validation of the solution.
- Fine-tune the user experience based on feedback and iterate on the product design as necessary.
Year 3: Pilot Implementation and Feedback
- Launch pilot programs in select regions or healthcare facilities to test the solution's effectiveness in real-world settings.
- Gather data and feedback from pilot participants to assess the solution's impact on improving healthcare outcomes and addressing users' needs.
- Continuously monitor and evaluate the pilot program's performance, making adjustments to the solution and implementation strategy as needed.
- Engage with stakeholders, including healthcare professionals and patients, to ensure their input informs further development and refinement of the solution.
Year 4: Scaling and Pricing Model Implementation
- Analyze the findings from pilot programs to refine the solution and prepare for scale-up.
- Develop a scalable infrastructure to support the expansion of the solution to new regions and markets.
- Implement the pricing model based on the value delivered by the solution and the willingness of users to pay.
- Launch marketing and promotional campaigns to raise awareness and drive adoption of the solution among target users.
- Forge strategic partnerships with key stakeholders, including government agencies, healthcare providers, and technology partners, to support the scaling efforts.
Year 5: Growth and Sustainability
- Scale up the solution to reach a wider audience, leveraging insights gained from pilot programs and early adopters.
- Continuously iterate on the solution based on user feedback and emerging trends in healthcare technology.
- Expand the range of services and features offered to meet the evolving needs of users and stakeholders.
- Explore opportunities for international expansion, considering the unique healthcare challenges and market dynamics of different regions.
- Focus on building a sustainable business model that ensures long-term viability and impact, balancing revenue generation with social impact goals.
Throughout the five-year plan, maintaining a strong focus on innovation, user-centric design, and collaboration with stakeholders will be crucial to the success of the project. By staying agile and adaptive, the project can navigate challenges and capitalize on opportunities to make a meaningful difference in the lives of millions affected by healthcare issues.
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