Category Archives: AI

How AI Can Transform Our Broken Healthcare System

Healthcare becomes deeply personal when the system’s fragmentation leads to life-altering outcomes. During COVID-19, my father’s doctor made what seemed like a prudent choice: postpone treatment for fluid retention to minimize virus exposure. What began as a cautious approach—understandable in a pandemic—ended up having dire consequences. By the time anyone realized how rapidly his condition was worsening, his kidneys had suffered significant damage, ultimately leading to kidney failure.

Later, despite years of regular check-ups and lab work (which hinted at possible malignancies), he was diagnosed with stage four lung cancer. Alarming as that was on its own, what stung even more was how these warning signs never coalesced into a clear intervention plan. His history as a smoker and several concerning lab results should have raised flags. Yet no one connected the dots. It was as if his care lived in separate compartments: one file at the dialysis center, another at oncology, and a third at his primary care clinic.

The Fragmentation Crisis

That disjointed experience shone a harsh light on how easily critical information can remain siloed. One specialist would note an abnormality and advise a follow-up, only for that recommendation to slip through the cracks by the time my father went to his next appointment. Each time he walked into a different office, he essentially had to start from scratch—retelling his story, hoping the right details were captured, and trusting that this piece could eventually reach the right people.

The challenges went beyond missing data. My father, who had set dialysis sessions on the same days each week, routinely found his other appointments—like oncology visits or additional lab work—piled on top of those sessions. He spent hours juggling schedules just to avoid double-booking, which was the last thing he needed while battling serious health concerns.

COVID-19 made all of this worse. The emphasis on social distancing—again, quite reasonable in itself—took away the face-to-face time that might have revealed early red flags. Without continuous, well-integrated data flow, even well-meaning advice to “stay home” inadvertently blocked us from seeing how quickly my father’s health was unraveling.

A Potential Game Changer: Subtle AI Support

Throughout this ordeal, I couldn’t help but imagine what a more seamless, data-driven healthcare system might look like. I’m not talking about robots taking over doctor visits, but rather subtle, behind-the-scenes assistance—sometimes described as “agentic workloads.” Think of these as AI systems quietly scanning medical records, cross-referencing lab results, and gently notifying doctors or nurses about unusual patterns.

AI is already proving its value in diagnostic imaging. Studies have shown that computer-vision algorithms can analyze X-rays, CT scans, and MRIs with remarkable accuracy—often matching or even surpassing human radiologists. For example, AI has been shown to detect lung nodules with greater precision, helping identify potential issues that might have been missed otherwise. This type of integration could enhance our ability to catch problems like kidney damage or lung cancer earlier, triggering quicker interventions.

Additionally, when he underwent chemotherapy, he had to wait weeks after treatment and imaging to learn whether it was effective—an excruciating delay that AI could drastically shorten by providing faster, more integrated feedback to both patients and care teams.

Ideally, this technology would work much like a vigilant assistant: it wouldn’t diagnose my father all on its own, but it could have flagged consistent changes in his kidney function and correlated them with other troubling indicators. Perhaps it would have unified those scattered bits of data—a chest X-ray here, a suspicious blood test there—so that each new piece of information triggered closer scrutiny.

Yet for all the promise AI holds, it won’t matter if patients and providers don’t trust it. If alerts and reminders are viewed as background noise—just another alarm among many in a busy clinic—then critical issues may still go unnoticed. That’s why any such system must be transparent about how it arrives at its recommendations, and it must operate continuously in tandem with real human oversight.

The Missing Thread: Continuous Care

One of the biggest challenges my father faced—beyond the clinical realities of organ failure and cancer—was navigating a disjointed care environment. Even when he saw the same doctors, he often encountered new nurses or support staff who weren’t familiar with his case. He had to become his own advocate, repeating medical histories and test results, worried that a single oversight could spell disaster.

If every practitioner had easy access to a continuous stream of up-to-date information, that weight wouldn’t have been solely on my father’s shoulders. An AI-backed platform might have served as the “single source of truth” across different hospitals, labs, and specialists. Instead of fragmented snapshots—a lab test here, a consultation there—his providers would see a holistic, evolving picture of his health. And instead of being passive recipients of siloed updates, they’d participate in a more proactive, team-based approach.

By incorporating AI, healthcare could move from isolated snapshots to a more dynamic and connected view. For example, AI systems could track trends in lab results and imaging over time, detecting subtle changes that may otherwise be overlooked. By learning from every new case, these systems continuously improve, identifying correlations across medical histories, imaging results, and lifestyle factors. This would allow for earlier interventions and more tailored care, such as flagging kidney function changes that coincide with other troubling indicators.

Why Trust Matters More Than Ever

Still, technology can only go so far without human trust and collaboration. The best data-sharing framework in the world won’t help if doctors and nurses are suspicious of AI’s findings or if patients don’t feel comfortable granting access to their health records. Some of this wariness is understandable; health information is deeply personal, and no one wants to risk privacy breaches or rely on software that might produce false alarms.

Yet, if handled properly—with robust privacy protections, clear transparency about how data is used, and consistent evidence of accuracy—AI can become a trusted ally. That trust frees up healthcare professionals to do what they do best: engage with patients, provide empathy, and make nuanced clinical judgments. Meanwhile, the AI quietly handles the complex, data-heavy tasks in the background.

Restoring the Human Element

Paradoxically, I believe that good AI could actually bring more humanity back into healthcare. Right now, many doctors and nurses are buried under administrative and repetitive tasks that eat into the time they can spend with patients. Automated systems can relieve some of that burden, ensuring that routine record checks, appointment scheduling, and cross-specialty communication flow smoothly without continuous manual follow-up.

For patients like my father, that could mean quicker recognition of red flags, fewer repeated tests, and less of the emotional toll that comes from feeling like you have to quarterback your own care. It could also open the door for more meaningful moments between patients and providers—when doctors aren’t racing against a backlog of paperwork, they can be more present and attentive.

Walking Toward a Better Future

My father’s story underscores the steep price we pay for a fragmented, often reactive healthcare system. Even though he was conscientious about his check-ups, too many critical data points floated disconnected across different facilities. By the time all those puzzle pieces came together, it was too late to prevent significant damage.

Yet this isn’t just about looking backward. If there’s a silver lining, it’s the conviction that we can do better. By embracing subtle, well-integrated AI systems, we could transform the way we handle everything from day-to-day care to life-changing diagnoses. We could move beyond isolated treatments and instead give patients a coherent support network—one that sees them as whole individuals rather than a collection of disconnected symptoms.

A Call to Rethink Care

I don’t claim to have all the answers, and I know technology can’t solve every issue in healthcare. But seeing my father’s struggle firsthand has taught me that we urgently need a more unified, trust-driven approach—one that values continuous monitoring as much as it does specialized expertise.

  • Patients should have full visibility into their records, supported by AI that can highlight pressing concerns.
  • Providers deserve a system that connects them with real-time data and offers gentle nudges for follow-up, not an endless overload of unrelated alerts.
  • AI developers must design platforms that respect privacy, ensure transparency, and genuinely earn the confidence of medical teams.

If we can get these pieces right, tragedies like my father’s might become far less common. And then, at long last, we’d have a healthcare system that fulfills its most fundamental promise—to care for human life in a truly holistic, proactive way.

Beyond Memorization: Preparing Kids to Thrive in a World of Endless Information

What does it take to prepare our children for a tomorrow where AI shapes how they get information, robots change traditional jobs, and careers transform faster than ever—a time when what they can memorize matters far less than how quickly they can think, adapt, and create? As a parent with children aged 29, 18, and 9, I can’t help wondering how to best prepare each of them. My oldest may have already found his way, but how do I ensure my younger two can succeed in a world so different from the one their brother entered just a few years before?

We’ve faced big changes like this before—moments that completely changed how we work and what opportunities exist. A century ago, Ford’s assembly line wasn’t just about making cars faster; it changed what skills workers needed and how companies treated employees. Decades later, Japan’s quality movement showed us that constant improvement and efficient thinking could transform entire industries. Each era required us to learn not just new facts, but new ways of thinking.

Today’s change, driven by artificial intelligence and robotics, is similar. AI will handle basic knowledge tasks at scale, and robots will take care of repetitive physical work. This means humans need to focus on higher-level skills: making sense of complex situations, evaluating information critically, combining ideas creatively, and breaking down big problems into solvable pieces. Instead of memorizing facts like a living library, our children need to know how to judge if information is trustworthy and connect ideas that might not seem related at first glance. They need to see knowledge not as something you collect and keep, but as something that grows and changes through questioning, discussion, and discovery.

Where can we find a guide for developing these new thinking skills? Interestingly, one already exists in our schools: the teaching strategies developed for gifted and twice-exceptional (2e) learners—students who are intellectually gifted but may also face learning challenges.

Gifted and 2e children think and learn in ways that are often intense, complex, and different from traditional methods. Teachers who work with these learners have refined approaches that develop multimodal thinking (using different ways to learn and understand), metacognition (thinking about how we think), and critical evaluation—exactly the skills all young people need in a future filled with smart machines and endless information.

Shift from Memorization to Meaning Instead of drilling facts, encourage your child to question sources. If you’re discussing a news article at dinner, ask: “How do we know this claim is accurate? What makes the source trustworthy?” Now they’re not just absorbing information; they’re actively working to understand it.

Foster Multimodal Exploration Make learning richer by using different approaches. Let them build a simple robot kit, draw a diagram of how it works, and then explain it in their own words. By connecting hands-on activity (tactile learning), visual learning, and verbal explanation, they develop deeper understanding.

Encourage Metacognition After solving a puzzle or coding a simple project, have them reflect: “What worked best? What would you try differently next time?” By understanding their own thought processes, they become better at adapting their approach to new challenges.

Highlight Interdisciplinary Connections and Global Outlook Show them that knowledge doesn’t exist in separate boxes. A math concept might connect beautifully with a musical pattern, or a historical event might be understood better through science. Help them see that good ideas and innovation come from everywhere in the world, not just one place or tradition.

Emphasize Emotional and Social Intelligence In a world where machines handle routine tasks, human qualities like empathy, communication, and teamwork become even more important. Encourage them to be comfortable with uncertainty, to see setbacks as chances to learn, and to develop resilience (the ability to bounce back from difficulties). These people skills will matter just as much as any technical knowledge.

Deep Learning and Entrepreneurial Thinking Like classical scholars who focused deeply on fewer subjects rather than skimming many, children benefit from spending more time thinking deeply about carefully chosen topics rather than rushing through lots of surface-level information. Consider teaching basic business and problem-solving skills early—like how to budget for a project or spot problems in their community that need solving—so they learn to create opportunities rather than just wait for them.

Finally, we’re raising children in an age where AI is becoming a constant helper and resource. While information is everywhere, the ability to understand it in context and make good judgments is rare and valuable. By using teaching techniques once reserved for gifted or 2e learners—multiple ways of learning, thinking about thinking, careful evaluation, global awareness, and creative combination of ideas—we prepare all children to be confident guides of their own learning. Instead of being overwhelmed by technology, they’ll learn to work with it, shape it, and use it to build meaningful futures.

This won’t happen overnight. But just as we adapted to big changes in the past, we can evolve again. We can model skepticism, curiosity, and flexible thinking at home. In doing so, we make sure that no matter how the world changes—no matter what new tools or systems appear—our children can stand on their own, resilient, resourceful, and ready to thrive in whatever tomorrow brings.