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Revolutionising Healthcare: Integration of EHR and AI — Features — The Guardian Nigeria News – Nigeria and World … – Guardian Nigeria

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The digital transformation of healthcare, often referred to as Healthcare 4.0, has significantly altered the way we manage and utilise health data. Electronic Health Records (EHRs), which have replaced traditional paper records, offer a comprehensive digital footprint of a patient’s medical history. These digital repositories are not just storage systems; they are dynamic tools that, when combined with Artificial Intelligence (AI), including Machine Learning (ML) and Natural Language Processing (NLP), can revolutionise patient care.
Understanding EHRs and role in healthcare
EHRs play a crucial role in modern healthcare by digitising and centralising patient health information. EHRs are digital versions of patients’ medical records that contain comprehensive and real-time information, including medical history, diagnoses, medications, test results, and treatment plans. They serve as a secure and accessible repository of patient data that can be easily shared among healthcare providers, improving coordination and continuity of care. EHRs facilitate efficient and accurate documentation, streamline workflows, and enable healthcare professionals to make informed clinical decisions.
Understanding power of AI and machine learning
Artificial Intelligence (AI) and Machine Learning (ML) are revolutionising various sectors, and healthcare is no exception. AI refers to the capability of a machine to mimic intelligent human behavior. It is about creating systems that can understand, learn, predict, and improve over time. Machine Learning, a subset of AI, involves the development of algorithms that allow computers to learn from and make decisions or predictions based on data. The true power of AI and ML lies in their ability to process vast amounts of data, identify patterns and trends that might be invisible to the human eye, and learn from these patterns to make accurate predictions or decisions.
Natural Language Processing: Making sense of unstructured data
NLP, a branch of AI, plays a significant role in enhancing the utility of EHR data. It can extract meaningful information from unstructured text data such as clinical notes, radiology reports, and pathology findings, and convert them into structured data that can be easily analyzed. NLP can also automate coding and billing processes, provide real-time decision support to healthcare providers, and analyze patient communications to better understand and respond to patient concerns.
The Power of AI in Analyzing Multidimensional EHR Data
In the realm of healthcare, the decision-making process is often complex and multifaceted. Physicians are tasked with the challenge of interpreting a multitude of data points from various tests and patient histories to arrive at a diagnosis or treatment plan. For instance, a positive result in Test A might naturally lead to a negative result in Test B, while Test C may not correlate with either Test A or Test B. This intricate web of interdependencies and correlations can sometimes lead to overlooked contexts or missed insights, especially when the volume of data is vast.
This is where Artificial Intelligence (AI) can play a transformative role. AI, with its advanced algorithms and computational power, can handle hundreds, even thousands, of data points simultaneously. It can analyze these data points, identify patterns, correlations, and anomalies, and provide valuable insights that might be missed by the human eye.
For example, AI can be trained to analyze EHR data and identify patterns that indicate a specific disease or health risk. It can also suggest potential treatment plans based on the patient’s unique medical history and current health status. This level of personalized and precise care can significantly improve patient outcomes.
Moreover, AI can continually learn and improve over time. As it is exposed to more data, its predictions and recommendations become more accurate and reliable. This ability to learn from experience, known as machine learning, is one of the key advantages of AI.
Furthermore, Deep Learning (DL), a subset of AI, can analyze large amounts of data to identify complex patterns that might be missed by traditional machine learning algorithms. For instance, they can analyze medical images to detect signs of diseases like cancer or heart disease. They can also analyze patient symptoms and medical history to diagnose diseases.
Benefits for Mankind
The fusion of Artificial Intelligence (AI) with Electronic Health Records (EHR) is revolutionizing healthcare, enhancing decision-making processes, and improving patient care. This integration is not about replacing healthcare professionals but equipping them with a robust tool that aids in making more precise and informed decisions. Here are some ways AI can enhance healthcare when integrated with EHR:

Enhanced Diagnostic Precision:
AI’s capacity to analyze extensive EHR data can lead to more precise diagnoses. For instance, a patient presenting a complex symptomatology that could indicate multiple diseases can be better understood with AI. It can quickly scan through thousands of similar patient records, identifying patterns that could suggest a specific diagnosis, thereby reducing misdiagnosis and ensuring appropriate treatment.
Predictive Analytics: AI can leverage historical EHR data to forecast health outcomes. For example, it can predict a patient’s risk of heart disease based on their medical history, genetic factors, and lifestyle, enabling early intervention and prevention.
Personalized Treatment Plans: AI can analyze a patient’s EHR data to devise personalized treatment plans. For instance, a cancer patient might respond better to a specific chemotherapy type based on their unique genetic markers. AI can identify these correlations, leading to a tailored treatment plan that is likely to be more effective.
Efficiency and Cost Reduction: AI can automate administrative duties such as coding and billing, decreasing the administrative strain on healthcare professionals and resulting in cost savings. For example, AI may autonomously diagnose CPT codes and ICD procedures based on information in EHRs, saving time and reducing the potential of human error.
Improved Patient Engagement: AI can analyze patient communications and feedback in EHRs to better understand and address patient concerns. This can help healthcare providers improve patient satisfaction.
Risk Stratification: AI can evaluate EHR data to classify patients based on their likelihood of getting specific diseases. This can assist healthcare practitioners in prioritizing high-risk patients and providing them with preventative care.
Enhanced Research Capabilities: AI can analyze EHR data for trends and patterns in illness prevalence, treatment efficacy, and other areas. This can lead to new discoveries and possibly more effective treatments.
Real-time Decision Support: AI can help healthcare providers make real-time decisions by analyzing EHR data and making recommendations based on the most recent medical guidelines and research. A clinician, for example, may utilize an AI tool to receive real-time advice on the best treatment options for a patient based on their specific medical history and the most recent clinical guidelines.
Integration with Wearable Data: AI can evaluate data from wearable devices linked to EHRs in real time to monitor patient health. A patient with a cardiac problem, for example, could wear a gadget that continuously monitors their heart rate and rhythm. This data might be connected with their EHR and evaluated with AI to discover any unusual patterns and warn the healthcare provider to potential problems.
Better Population Health Management: By evaluating EHR data across a population, AI may discover public health trends, track disease outbreaks, and advise public health treatments and policies. For example, public health professionals could utilize AI to examine EHR data and spot a growing disease outbreak, allowing them to swiftly adopt measures to contain the outbreak.
Better Care Coordination: AI can scan EHR data to detect gaps in care and help coordinate care among multiple healthcare providers. For example, if a patient sees numerous specialists, AI can help guarantee that all clinicians have a complete and up-to-date view of the patient’s health, resulting in more coordinated and effective care.
Improved Patient Experience: By delivering more accurate and comprehensive information to healthcare practitioners, AI can assist improve the patient experience. Patients will receive more tailored care, will spend less time rehashing their medical history, and will have greater trust in their treatment choices.
In conclusion, the integration of EHR and AI holds significant potential for improving healthcare effectiveness. As we continue to advance in the age of big data, the importance of medical data and its integration with distribution will continue to grow. This integration is paving the way for a new era in healthcare that is digital, personalized, and powered by AI.
Kulbir Singh, a distinguished leader in the realm of analytics and data science, is the Health Information Manager at Elevance Health.

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