Try : Insurtech, Application Development

AgriTech(1)

Augmented Reality(21)

Clean Tech(9)

Customer Journey(17)

Design(45)

Solar Industry(8)

User Experience(68)

Edtech(10)

Events(34)

HR Tech(3)

Interviews(10)

Life@mantra(11)

Logistics(5)

Manufacturing(3)

Strategy(18)

Testing(9)

Android(48)

Backend(32)

Dev Ops(11)

Enterprise Solution(33)

Technology Modernization(9)

Frontend(29)

iOS(43)

Javascript(15)

AI in Insurance(38)

Insurtech(66)

Product Innovation(58)

Solutions(22)

E-health(12)

HealthTech(24)

mHealth(5)

Telehealth Care(4)

Telemedicine(5)

Artificial Intelligence(153)

Bitcoin(8)

Blockchain(19)

Cognitive Computing(8)

Computer Vision(8)

Data Science(23)

FinTech(51)

Banking(7)

Intelligent Automation(27)

Machine Learning(48)

Natural Language Processing(14)

expand Menu Filters

Why Interoperability is Key To Unlocking India’s Digital Healthcare Ecosystem

India’s mammoth hospital landscape accounts for nearly 60% of the overall health ecosystem’s revenues. The COVID-19 Pandemic has escalated digital health-seeking behaviour within the public consciousness and renewed India’s impetus towards healthcare innovation. Traditional modes of healthcare delivery are being phased out, in favour of new and disruptive models. The creation of the National Health Stack (NHS), a digital platform with the aim to create universal health records for all Indian citizens by 2022, will bring both central & state health verticals under a common banner.

Yes, progress is slow, but the addition of new frameworks for Health ID, PHR, telemedicine, and OPD insurance will create macro-level demand beyond local in-patient catchment zones. India’s Healthcare ecosystem is now slowly but surely moving towards a wellness-driven model of care delivery from its historically siloed & episodic intervention approach. This streamlining of healthcare creates a new wealth of opportunities for healthcare enterprises. 

But at the core of this approach lies the biggest challenge yet for Indian healthcare — Interoperability or the lack thereof as of now. The ability of health information systems, applications, and devices to send or receive data is paramount to the success of this new foundational framework.

What does the NDHM blueprint have for us? 

By design, the NDHM envisions the healthcare ecosystem to be a comprehensive set of digital platforms—sets of essential APIs, with a strong foundational architecture framework—that brings together multiple groups of stakeholders enabled by shared interfaces, reusable building blocks, and open standards. 

The Blueprint underlines key principles which include the domain perspective—Universal Health Coverage, Security & Privacy by Design, Education & Empowerment, and Inclusiveness of citizens; and the technology perspective—Building Blocks, Interoperability, a set of Registries as single sources of truth, Open Standards, and Open APIs. 

For ‘Technical interoperability’ considerations, all participating health ecosystem entities will need to adopt the standards defined by the IndEA framework. This will allow the integration of all disparate systems under one roof to securely achieve the exchange of clinical records and patient-data portability across India.

The NDHM Ecosystem will allow healthcare providers to gain better reach to new demand pools in OPD & IPD care. India’s OPD rates are currently only at 4 per day per 1000 population. For the patient, this means more preventive check-ups, lower out-of-pocket expenses, timely access to referrals, follow-up care, and improved health-seeking behavior. 

Centralized ID systems across International Territories 

All of this is being tied to a unique health ID for each citizen (or patient in a healthcare setting). What’s unique about health IDs is that each health ID is linked to ‘care contexts’ which carry information about a person’s health episode and can include health records like out-patient consultation notes, diagnostic reports, discharge summaries, and prescriptions. They are also linked to a health data consent manager to help manage a person’s privacy and consent. 

Centralised ID systems, although they come with great privacy & security-related risks, are essential to expanding coverage and strengthening links to service delivery for underprivileged citizens. India’s Unique Identification (UID) project, commonly known as Aadhaar, has also spurred interest in countries like Russia, Morocco, Algeria, Tunisia, Indonesia, Thailand, Malaysia, Philippines, and Singapore – who are now looking to develop Aadhaar-like identification systems for their territories.

By tying together unique IDs that are carefully secured with our health records, health systems can ‘talk’ with each other through secure data exchanges and facilitate optimization of innovative healthcare delivery models. For instance, a patient with a chronic condition (like diabetes, heart disease, etc.) can choose to send their health data to their practitioner of choice and have medical information, treatment, and advice flow to them, instead of them having to step into a doctor’s office.

Platforms that help add richness to existing Medical Information Systems

Distribution in healthcare will get a new and long-awaited facelift with the influx of health startups and other innovative solutions being allowed to permeate the market. Modern EHRs play a significant role in enhancing these new business models — by pulling information that has been traditionally siloed into new systems built on top of the EHRs, that can draw ‘patient-experience changing’ insights from them. For instance, Epic’s App Orchard and Cerner’s Code, and Allscripts’ Development Program — have opened up their platforms to encourage app development in this space. Data that flows into EHR systems, like Orchard or Allscripts, can then be fed into a clinical decision support system (CDSS) — from where developers can train models and provide inferences. For example, take the case of a patient who has a specific pattern of disease history. With the aid of Machine learning trained models, a CDSS can prompt the clinician with guidance about diagnosis options based on the patient’s previous history.

Let’s look at another example, where traditional vital signs and lab values are used to signal alarms for a patient’s health condition. A patient who has previously been treated for chronic bronchitis may come in because they are experiencing an unknown allergic reaction. In a typical scenario, the clinician has to depend on lab values, extensive tests, and context-less medical history reports — to get to the root of the issue. 

But this can be replaced by continuously monitoring AI tools that detect early patterns in health deterioration. In this example case, it could have helped the clinician identify immediately that the patient’s condition may be caused by exposure to allergy triggers, causing ‘allergic bronchitis’. Curated data from EHRs can be used to train models that help risk-stratify patients and assist decision-makers in classifying preoperative & non-operative patients into multiple risk categories.

Data warehouses contain the valuable oil, that is EHR data, but are also enriched with other types of data – like claims data, imaging data, genetic information-type, patient-generated data such as patient-reported outcomes, and wearable-generated data that includes nutrition, at-home vitals monitoring, physical activity status – collected from smartphones and watches. 

Today, data sharing is far from uncommon. For example, The OneFlorida Clinical Research Consortium uses clinical data from twelve healthcare organizations that provide care for nearly fifteen million Florida residents in 22 hospitals. Another example is the European Medical Information Framework (EMIF) which contains EHR data from 14 countries, blended into a single data model to enable new medical discovery and research.

Unsurprisingly, EHR companies were amongst the first to comply with interoperability rules. To that effect, EHR APIs are used for extracting data elements and other patient information from health records stored within one health IT system. With this data, healthcare organizations can potentially build a broad range of applications from patient-facing health apps, telehealth platforms, patient management solutions for treatment monitoring to existing patient portals. 

What’s Next?

In the next ten years, Cisco predicts that 500 billion sensory devices with 4-5 signals each will be connected to the Internet of Everything. This will create about 250 sensory data points per person on average. This wealth of data is ushering in a new wave of opportunities within healthcare. Deriving new interactions from the patient’s journey can be quite arduous. As the health consumer is being ushered into the ‘age of experiences’, the onus is on digital healthcare enterprises to make them more relevant, emotional, and personalized. 

By preparing for ‘Integration Readiness’, healthcare providers can access new patient demand pools from tier-2 & tier-3 cities, identify insights about the health consumer’s life cycle needs, and leverage new technologies to draw in more value from these interactions than ever before. Consequently, hospitals will be able to drive improved margins from reduced administrative costs and gain higher utilization through increased demand.

Parag Sharma, CEO & Founder, Mantra Labs featured in CXO Outlook. Read More – CXO Outlookhttps://www.cxooutlook.com/why-interoperability-is-key-to-unlocking-indias-digital-healthcare-ecosystem/

Cancel

Knowledge thats worth delivered in your inbox

AI Code Assistants: Revolution Unveiled

AI code assistants are revolutionizing software development, with Gartner predicting that 75% of enterprise software engineers will use these tools by 2028, up from less than 10% in early 2023. This rapid adoption reflects the potential of AI to enhance coding efficiency and productivity, but also raises important questions about the maturity, benefits, and challenges of these emerging technologies.

Code Assistance Evolution

The evolution of code assistance has been rapid and transformative, progressing from simple autocomplete features to sophisticated AI-powered tools. GitHub Copilot, launched in 2021, marked a significant milestone by leveraging OpenAI’s Codex to generate entire code snippets 1. Amazon Q, introduced in 2023, further advanced the field with its deep integration into AWS services and impressive code acceptance rates of up to 50%. GPT (Generative Pre-trained Transformer) models have been instrumental in this evolution, with GPT-3 and its successors enabling more context-aware and nuanced code suggestions.

Image Source

  • Adoption rates: By 2023, over 40% of developers reported using AI code assistants.
  • Productivity gains: Tools like Amazon Q have demonstrated up to 80% acceleration in coding tasks.
  • Language support: Modern AI assistants support dozens of programming languages, with GitHub Copilot covering over 20 languages and frameworks.
  • Error reduction: AI-powered code assistants have shown potential to reduce bugs by up to 30% in some studies.

These advancements have not only increased coding efficiency but also democratized software development, making it more accessible to novice programmers and non-professionals alike.

Current Adoption and Maturity: Metrics Defining the Landscape

The landscape of AI code assistants is rapidly evolving, with adoption rates and performance metrics showcasing their growing maturity. Here’s a tabular comparison of some popular AI coding tools, including Amazon Q:

Amazon Q stands out with its specialized capabilities for software developers and deep integration with AWS services. It offers a range of features designed to streamline development processes:

  • Highest reported code acceptance rates: Up to 50% for multi-line code suggestions
  • Built-in security: Secure and private by design, with robust data security measures
  • Extensive connectivity: Over 50 built-in, managed, and secure data connectors
  • Task automation: Amazon Q Apps allow users to create generative AI-powered apps for streamlining tasks

The tool’s impact is evident in its adoption and performance metrics. For instance, Amazon Q has helped save over 450,000 hours from manual technical investigations. Its integration with CloudWatch provides valuable insights into developer usage patterns and areas for improvement.

As these AI assistants continue to mature, they are increasingly becoming integral to modern software development workflows. However, it’s important to note that while these tools offer significant benefits, they should be used judiciously, with developers maintaining a critical eye on the generated code and understanding its implications for overall project architecture and security.

AI-Powered Collaborative Coding: Enhancing Team Productivity

AI code assistants are revolutionizing collaborative coding practices, offering real-time suggestions, conflict resolution, and personalized assistance to development teams. These tools integrate seamlessly with popular IDEs and version control systems, facilitating smoother teamwork and code quality improvements.

Key features of AI-enhanced collaborative coding:

  • Real-time code suggestions and auto-completion across team members
  • Automated conflict detection and resolution in merge requests
  • Personalized coding assistance based on individual developer styles
  • AI-driven code reviews and quality checks

Benefits for development teams:

  • Increased productivity: Teams report up to 30-50% faster code completion
  • Improved code consistency: AI ensures adherence to team coding standards
  • Reduced onboarding time: New team members can quickly adapt to project codebases
  • Enhanced knowledge sharing: AI suggestions expose developers to diverse coding patterns

While AI code assistants offer significant advantages, it’s crucial to maintain a balance between AI assistance and human expertise. Teams should establish guidelines for AI tool usage to ensure code quality, security, and maintainability.

Emerging trends in AI-powered collaborative coding:

  • Integration of natural language processing for code explanations and documentation
  • Advanced code refactoring suggestions based on team-wide code patterns
  • AI-assisted pair programming and mob programming sessions
  • Predictive analytics for project timelines and resource allocation

As AI continues to evolve, collaborative coding tools are expected to become more sophisticated, further streamlining team workflows and fostering innovation in software development practices.

Benefits and Risks Analyzed

AI code assistants offer significant benefits but also present notable challenges. Here’s an overview of the advantages driving adoption and the critical downsides:

Core Advantages Driving Adoption:

  1. Enhanced Productivity: AI coding tools can boost developer productivity by 30-50%1. Google AI researchers estimate that these tools could save developers up to 30% of their coding time.
IndustryPotential Annual Value
Banking$200 billion – $340 billion
Retail and CPG$400 billion – $660 billion
  1. Economic Impact: Generative AI, including code assistants, could potentially add $2.6 trillion to $4.4 trillion annually to the global economy across various use cases. In the software engineering sector alone, this technology could deliver substantial value.
  1. Democratization of Software Development: AI assistants enable individuals with less coding experience to build complex applications, potentially broadening the talent pool and fostering innovation.
  2. Instant Coding Support: AI provides real-time suggestions and generates code snippets, aiding developers in their coding journey.

Critical Downsides and Risks:

  1. Cognitive and Skill-Related Concerns:
    • Over-reliance on AI tools may lead to skill atrophy, especially for junior developers.
    • There’s a risk of developers losing the ability to write or deeply understand code independently.
  2. Technical and Ethical Limitations:
    • Quality of Results: AI-generated code may contain hidden issues, leading to bugs or security vulnerabilities.
    • Security Risks: AI tools might introduce insecure libraries or out-of-date dependencies.
    • Ethical Concerns: AI algorithms lack accountability for errors and may reinforce harmful stereotypes or promote misinformation.
  3. Copyright and Licensing Issues:
    • AI tools heavily rely on open-source code, which may lead to unintentional use of copyrighted material or introduction of insecure libraries.
  4. Limited Contextual Understanding:
    • AI-generated code may not always integrate seamlessly with the broader project context, potentially leading to fragmented code.
  5. Bias in Training Data:
    • AI outputs can reflect biases present in their training data, potentially leading to non-inclusive code practices.

While AI code assistants offer significant productivity gains and economic benefits, they also present challenges that need careful consideration. Developers and organizations must balance the advantages with the potential risks, ensuring responsible use of these powerful tools.

Future of Code Automation

The future of AI code assistants is poised for significant growth and evolution, with technological advancements and changing developer attitudes shaping their trajectory towards potential ubiquity or obsolescence.

Technological Advancements on the Horizon:

  1. Enhanced Contextual Understanding: Future AI assistants are expected to gain deeper comprehension of project structures, coding patterns, and business logic. This will enable more accurate and context-aware code suggestions, reducing the need for extensive human review.
  2. Multi-Modal AI: Integration of natural language processing, computer vision, and code analysis will allow AI assistants to understand and generate code based on diverse inputs, including voice commands, sketches, and high-level descriptions.
  3. Autonomous Code Generation: By 2027, we may see AI agents capable of handling entire segments of a project with minimal oversight, potentially scaffolding entire applications from natural language descriptions.
  4. Self-Improving AI: Machine learning models that continuously learn from developer interactions and feedback will lead to increasingly accurate and personalized code suggestions over time.

Adoption Barriers and Enablers:

Barriers:

  1. Data Privacy Concerns: Organizations remain cautious about sharing proprietary code with cloud-based AI services.
  2. Integration Challenges: Seamless integration with existing development workflows and tools is crucial for widespread adoption.
  3. Skill Erosion Fears: Concerns about over-reliance on AI leading to a decline in fundamental coding skills among developers.

Enablers:

  1. Open-Source Models: The development of powerful open-source AI models may address privacy concerns and increase accessibility.
  2. IDE Integration: Deeper integration with popular integrated development environments will streamline adoption.
  3. Demonstrable ROI: Clear evidence of productivity gains and cost savings will drive enterprise adoption.
  1. AI-Driven Architecture Design: AI assistants may evolve to suggest optimal system architectures based on project requirements and best practices.
  2. Automated Code Refactoring: AI tools will increasingly offer intelligent refactoring suggestions to improve code quality and maintainability.
  3. Predictive Bug Detection: Advanced AI models will predict potential bugs and security vulnerabilities before they manifest in production environments.
  4. Cross-Language Translation: AI assistants will facilitate seamless translation between programming languages, enabling easier migration and interoperability.
  5. AI-Human Pair Programming: More sophisticated AI agents may act as virtual pair programming partners, offering real-time guidance and code reviews.
  6. Ethical AI Coding: Future AI assistants will incorporate ethical considerations, suggesting inclusive and bias-free code practices.

As these trends unfold, the role of human developers is likely to shift towards higher-level problem-solving, creative design, and AI oversight. By 2025, it’s projected that over 70% of professional software developers will regularly collaborate with AI agents in their coding workflows1. However, the path to ubiquity will depend on addressing key challenges such as reliability, security, and maintaining a balance between AI assistance and human expertise.

The future outlook for AI code assistants is one of transformative potential, with the technology poised to become an integral part of the software development landscape. As these tools continue to evolve, they will likely reshape team structures, development methodologies, and the very nature of coding itself.

Conclusion: A Tool, Not a Panacea

AI code assistants have irrevocably altered software development, delivering measurable productivity gains but introducing new technical and societal challenges. Current metrics suggest they are transitioning from novel aids to essential utilities—63% of enterprises now mandate their use. However, their ascendancy as the de facto standard hinges on addressing security flaws, mitigating cognitive erosion, and fostering equitable upskilling. For organizations, the optimal path lies in balanced integration: harnessing AI’s speed while preserving human ingenuity. As generative models evolve, developers who master this symbiosis will define the next epoch of software engineering.

Cancel

Knowledge thats worth delivered in your inbox

Loading More Posts ...
Go Top
ml floating chatbot