Technology has been the enabler of healthcare for years. From large organizations to small clinics, providers in different parts of the world have used apps, data management platforms, and many other systems as key ways to streamline their operations and drive better clinical outcomes. Their modernization efforts are still underway but the strategic focus is shifting toward one major trend – AI.
At a time when healthcare providers are facing staff shortages and patients continue to demand better quality of care, AI is being seen as the go-to answer. The technology, with its ability to tap large data repositories, including patient-specific data, can personalize care delivery. This can ultimately reshape how healthcare providers diagnose, treat, and interact with patients, enabling them to move away from generic, one-size-fits-all approaches.
How Exactly Is AI Personalizing Care Delivery?
While AI has been around for quite some time, the meteoric rise of ChatGPT has pushed its applications front and center at different levels of the healthcare ecosystem. One of these is diagnostics. AI-driven systems can analyze vast amounts of patient data to provide personalized diagnoses and treatment recommendations. Watson Health, a division of IBM focusing on applying AI and data analytics to healthcare, is the frontrunner in this space. Their technology analyzes various patient parameters, including medical history, genetics, and disease symptoms, to diagnose the underlying condition and offer personalized treatment recommendations.
According to a study published in the Journal of Clinical Oncology, Watson Health’s oncology-specific AI decision-support system achieved a 93% concordance rate with treatment recommendations of an expert tumor board. This high level of accuracy demonstrates how AI-powered personalization can improve diagnostic precision and treatment effectiveness, ultimately leading to better patient outcomes.
Beyond detecting and recommending treatments for ongoing problems, AI-driven personalization can also help with preventive care. Essentially, algorithms can analyze day-to-day patient metrics, like SPO2 and BP (among other things), and combine them with data related to lifestyle and genetics to predict the chances of a person suffering from a particular health problem — as well as the steps they can take (imagine specific lifestyle changes) to prevent it.
A study published in PLOS One demonstrated that an AI-driven approach could lead to a reduction in hospital readmissions and emergency department visits. This not only shifts patients’ focus from reactive treatment to proactive prevention but also saves healthcare providers resources that would otherwise be going into extensive follow-ups or treatment.
However, personalizing prevention, diagnosis, and treatments is just one bit of the healthcare puzzle.
AI is also playing a crucial role in personalizing medical prescriptions, an area where 100% precision is vital. Incorrect drug prescriptions can lead to adverse reactions and even fatalities in some extreme cases. A 2016 study by Johns Hopkins University’s School of Medicine found that medical errors, including incorrect prescriptions, are responsible for over 250,000 deaths annually in the US alone.
Thankfully, AI-powered tools can address this issue by analyzing factors such as patients’ genetic makeup and medical histories to predict how they will respond to specific medications. This allows healthcare providers to tailor prescriptions to each patient individually, significantly reducing the risk of adverse reactions and improving treatment efficacy.
Streamlining Administrative Processes
While clinical care is at the forefront of AI personalization, the technology is also improving administrative processes in healthcare. It simplifies tasks such as appointment scheduling, billing, and assistance, making them more personalized and efficient.
Zocdoc, an online platform for booking medical appointments, is the best example of AI helping with administrative tasks. The company’s platform uses machine learning to ensure appointments are seamlessly integrated into healthcare providers’ schedules, potentially decreasing patient wait times and increasing the likelihood of timely care. It even helps patients check their healthcare coverage and estimate the total cost of treatment by simply taking a photo of their health card. Another player in the category is Nabla, which uses LLMs to generate clinical notes from doctor-patient interactions, saving the trouble of documenting the information manually.
Notably, generative AI-powered chatbots and agents are also transforming patient engagement and improving their access to care. They analyze patient data and provide them with round-the-clock access to personalized support whether they need help with registration, routing, scheduling, or prescription refills. This technology has significantly improved the patient experience, making individuals feel more valued and understood.
Overall, the impact of AI-powered personalization on healthcare is substantial and growing. The technology has already enhanced patient-caregiver interactions, enabled tailored prescriptions, and improved preventive care strategies, making healthcare more efficient, effective, and patient-centric. As AI continues to advance, its potential to revolutionize healthcare will likely expand. Future developments may include further personalization of treatment plans and deeper integration of AI across all aspects of healthcare delivery.
However, as these advancements take shape, it will be equally vital to address potential challenges associated with AI, especially the privacy and security of healthcare data used by AI models. Organizations using these tools should strive to maintain the human touch in patient care and help address potential biases in AI algorithms. It will all boil down to how they collaborate with companies developing these tools and the governments defining the regulations for using them.
In the long run, the potential benefits of AI-powered personalization in healthcare will be immense. By embracing this technology responsibly and ethically, the healthcare industry can move towards a future where truly personalized care is the norm, leading to better health outcomes for all.