4 Longevity Supplements Experts Recommend—and 4 They Say Are Overhyped



Medically reviewed by Patricia Mikula, PharmD

Credit: Anastasiia Voloshko / Getty Images
Credit: Anastasiia Voloshko / Getty Images
  • Studies on longevity supplements done in animals show promising results, but there’s limited evidence on their safety and effectiveness in humans.
  • Factors like lifestyle, underlying health conditions, and even genetics can affect how longevity supplements work.
  • The way longevity supplements are interpreted by the supplement industry for marketing purposes often differs from how scientists report them.

A 2025 McKinsey report found that up to 60% of people regard healthy aging as a very important priority. With many supplements now touted as a sure way to reverse aging and promote longevity, Health interviewed longevity experts (healthcare professionals or researchers who apply evidence-based strategies to help people live longer, healthier lives) to determine which supplements are actually worth considering and which are simply overhyped.

What Longevity Experts Actually Agree On

Many experts are divided as to what really works, or if they have any benefit at all. For some experts, the benefits of longevity supplements are more context-dependent, or depend on each patient's needs.

While consensus is rare, a few supplements consistently come up when we ask health professionals what can actually help.

1. Vitamin D

Some studies suggest that daily supplementation with about 2,000 I.U. of vitamin D can slow the rate at which your cells age.

Vitamin D deficiency has been found to be associated with an increased risk of age-related diseases such as Alzheimer’s disease, cognitive impairment, Parkinson’s disease, and cancer.

"Vitamin D is a well-supported supplement, although it is helpful mainly if you are actually deficient (which about 40% of Americans are),” Hillary Lin, MD, a Stanford-trained physician focused on longevity and co-founder of CareCore, told Health.

However, this is still an emerging area of research, and more evidence is needed.

2. Protein Supplements

Older adults tend to have an increased risk of muscle loss, which can affect physical function, increase hospitalization risk, and lead to a loss of independence.

​Studies suggest that combining a protein supplements with an active lifestyle can help older adults build muscle mass. In addition, adding protein to your meal, especially plant protein, has been linked to a higher likelihood of healthy aging.

​According to Lin, many people consume far less protein than needed to maintain or gain muscle mass. "Sarcopenia (age-related loss of muscle mass) is slow, silent, and starts earlier than people think."

3. Omega-3s

Although evidence is limited, some clinical trials suggest that omega-3s may slow biological aging (the age of cells) by up to four months, especially when combined with vitamin D and exercise.

​“Omega-3s are my most frequent recommendation, given the anti-inflammatory benefits and support for cardiovascular health,” said Lin. She also noted that many people do not get adequate omega-3 from their diet alone.

​That said, some studies report that although fish oil has benefits for healthy aging, it does not appear to slow aging or confer longevity benefits.

4. Magnesium

Magnesium deficiency is common in old age and may increase inflammation and free radicals, which have been associated with age-related diseases and the aging process.

​Taking magnesium supplements to maintain an optimal magnesium balance can contribute to healthy aging. In animal studies, taking magnesium has been found to improve longevity, but this has not been established in humans.

​However, Lin notes she personally recommends supplements such as magnesium to support healthy aging for some of her patients because they have “plausible mechanisms, meaningful human data, and low risk profiles."

Longevity Supplements That Experts Are Unsure About

According to Pravin Date, MD, a primary care physician at Kaiser Permanente in Southern California and a doctor at Alive Health, some longevity supplements may be overhyped. While these supplements have some interesting mechanisms for longevity and healthy aging, the evidence, especially regarding their benefits in humans, remains unclear.

1. NMN and NAD+ Boosters

Studies suggest that nicotinamide adenine dinucleotide (NAD+) helps produce energy, reduces oxidative stress, and prevents DNA damage.

​As you get older, NAD+ levels decline, a trend linked to increased biological age and age-related diseases.

Some researchers suggest that increasing NAD+ levels with NAD+ boosters such as nicotinamide mononucleotide (NMN) and nicotinamide riboside (NR) can slow aging. However, there are not enough studies in humans to confirm its safety or effectiveness.

​“Human trials are small and short. I'm not saying they don't work—we simply do not know yet,” said Lin.

2. Resveratrol

Resveratrol, a compound found in grapes, red wine, and blueberries, has also been shown in some studies to have antiaging effects, prolong health span, and prevent age-related diseases.

​Some studies also suggest that they can protect against the harmful effects of ultraviolet radiation, which can accelerate aging and may also reduce wrinkles.

​However, most of these studies were done in cells and animals. There are not enough studies examining the effects of resveratrol on increasing health span in humans.

​“Resveratrol has been thoroughly disappointing in human trials despite extraordinary mouse data,” Lin added.

3. Berberine

Berberine has been reported to improve overall health by reducing inflammation, improving blood sugar and blood pressure levels.

​While animal studies suggest that berberine significantly extends healthy lifespan, there is insufficient evidence to indicate that it has this effect in humans.

“Berberine is a bit of a gray zone. It has some metabolic benefit, but still not something I broadly recommend to patients,” Date said.

Lin said that berberine has robust metabolic evidence supporting its use, but its poor bioavailability and the quality of over-the-counter products may limit its effectiveness.

4. Ashwaganda

In Ayurvedic medicine and animal studies, ashwagandha has been reported to extend healthspan and promote healthy aging. However, there is no evidence to suggest that ashwagandha promotes longevity in humans.

“Ashwaghanda is the most nuanced of longevity supplements. There's some short-term data for cortisol and stress, but long-term safety data in diverse populations is thin,” Lin said.



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1. What is Data Science?
2. What is Business Analytics?
3. Key Differences Between Data Science and Business Analytics
a.Basic Definition
b. Type of trends
c. Type of Data
d. Coding or Programming languages
e. Companies 
4. Data Science vs Business Analytics
Roles and Responsibilities
Career path
Skills required
Type of Data
5.Conclusion

The popularity of Data Science has increased rapidly in the past few years and continues to increase with every passing data. As the organisations continue to create massive amounts of data, the implementation of Data Science becomes an obvious scenario.

If any company wishes to grow along with enhancing its user satisfaction, Data Science is something they need. Data Science uses modern techniques and tools to draw insights from that data which helps in making effective business decisions. It also uses several complicated Machine Learning algorithms to form predictive models. 

Business Analytics is a practice used by companies to figure out what is happening in their business and how they can improve it. It helps in the overall decision making along with some future planning. 

Since every company today is producing chunks of data, they need some data-oriented methods to draw insights from their past and present data to understand their loopholes which in turn helps them make some strategies keeping the current market trends in mind. 

Now, when you know the basics of both Data Science and Business Analytics, it’s time to dive in deep and understand the main differences between the two popular terms.

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Key Differences Between Data Science and Business Analytics

There are several steps that are common in both like data gathering, data modelling, and drawing insights from that data. But, this is definitely not it, Data Science and Business Analytics are two big oceans that might meet somewhere, but are entirely different.  

Let’s have a look at the differences between the two in elaboration.

Basic Definition

Data Science as the name suggests is the science of data, i.e. study of data using several Machine Learning algorithms, statistical tools, and other technological support. It is a combination of diverse fields like programming skills, mathematical principles, analytical thinking, and domain expertise to draw insights from huge amounts of data.

Business Analytics focuses on the business data and uses several analytical tools to draw insights from that data eventually scaling the business. It is a data-driven approach that focuses on historical data, identifying trends from there, checking out if there is any pattern and if there was a problem, what is the root cause of that problem. 

Type of trends

Data Science focuses on all the trends and patterns leaving no page unturned to make an effective business model.Business Analytics revolves around the trends and patterns that reveal insights related to a particular business. 

Type of Data

Data Science focuses on all types of data structured, semi-structured and unstructured data. To understand that structured data is highly refined and everything is just in front of your eyes, unstructured data is all complicated with no clarity on the type of data. So, Data Science uses several tools and techniques to work on different types of data. Business Analytics is concerned with organisational data. It uses several data analytics tools and other statistical principles to explore the organisational data and have an effective decision-making process.

Coding or Programming Languages

Data Science requires some rigorous algorithmic coding, statistical tools, and other analytical work to draw insights from tons of data. Languages like R and Python are widely used in several Machine Learning algorithms. Also, when unstructured data is concerned, knowing a programming language is a must. Apart from R and Python, you can also choose to learn C, C++, Perl and Java.

Business Analytics requires minimum coding as it is mostly focused on drawing insights using several statistical methods. Even if there is something advanced to be done, you can use advanced statistical methods as mostly the data is concerned with a single problem. So, business analytics tools like Tableau and Splunk are enough to draw insights from the organisational data. 

Companies 

Data Science is used in several big sectors today like e-commerce, machine learning, design and manufacturing, and marketing and finance. Data Science helps companies to understand how they can use their data effectively, whether it is about taking important business decisions or hiring more employees or even keeping a check on the workflow. 

Business Analytics is used in industries like healthcare, marketing and finance, supply chain, and telecommunications. The biggest advantage of using business analytics is the reduction of risk as when the decisions are made using Business Analytics there are several factors covered like customer data, their preferences, market trends, the popularity of products etc, which may be missed otherwise. 

Now, when you know the difference between Data Science and Business Analytics, let’s distinguish between a Data Scientist and a Business Analyst.

Data Scientist vs Business Analyst

Data Science is way bigger than Business Analytics and considers several factors that Business Analytics doesn’t even think of. While Business Analytics just focuses on business-related issues, Data Science even digs into the influence of factors like weather, customer preference, and several seasonal factors.

Let’s understand the differences between the two on a professional level, i.e. the differences between a Data Scientist vs. a Business Analyst.

Roles and Responsibilities:

Roles and Responsibilities of a Data Scientist include extracting and organising data. They draw meaningful insights from that data which could be structured or unstructured. To do all of it, they must have good knowledge of Machine Learning, Statistics, Probability, and other mathematical skills. Furthermore, they must have a firm grip on concepts like Python, R, Spark, Hadoop, and Tensor flow.

The roles and responsibilities of a Business Analyst include communicating with clients and providing them with business solutions. They must have great interpersonal and management skills to assist clients in designing and implementing relevant technical solutions. Along with all the assistance, they are always on their A-game in monitoring the overall business growth.

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Career path – The future

No matter what the sector is, be it healthcare, finance, management or transportation, the data needs to be taken care of and insights must be taken from that data for that industrial segment to grow. So, to make sure this happens, companies are looking for experts and no doubt Data Scientist is one of those job roles that are in most demand today and are one of the highest paying jobs in the world. The demand for Data Scientists is not going to reduce anytime soon considering the rapid production of granular data across the globe. 

Business Analyst is one of those jobs that report a great level of work-life balance and job satisfaction. Again, it is one of those job roles that have a lot of openings in the market and one of the well-paid jobs too. Business Analysts are in great demand among organisations that are looking forward to scaling their businesses and improving their overall performance. The best part is the role of a Business Analyst is not limited to one designation, it changes from company to company. There are several roles that you can pursue if you have expertise in Business Analysis like Network Analyst, Project Manager, Data Analyst, and Business Consultant.

Skills required

Skills required to be a Data Scientist include: 

Python – Data Science requires a firm hold of programming languages. When it comes to programming in Data Science, Python is one of the most widely used programming languages as it is easy to use and highly adaptable, even for people without a coding background.

Keras – Keras is used for artificial neural networks as they provide a python interface. Hence, they are used when it comes to experimentation with neural nets, that too at a great speed. 

PyTorch – PyTorch is another deep learning framework extremely popular for its agility and compatibility with the Python framework. The framework simplifies the overall process to create an Artificial Neural Network (ANN). 

Computer Vision – Computer Vision enables the Data Science systems to extract knowledge from images and videos to make necessary decisions. 

Deep Learning – Deep Learning is something that makes the entire Data Science system more accurate as it enables the creation of extremely complex models.

Natural Language Processing – Natural Language Processing or NLP is something that is bridging the gap between Data Science and humans, by teaching computer systems how to read and interpret like humans. 

Problem-solving – Problem-solving just doesn’t refer to the problem that is in front of you, being a Data Scientist you are responsible for solving problems that may be hidden.

Analytical Thinking – Data Scientists must have an eye for detail and analyse problems before actually starting to deal with them. It is important to examine the problem from all verticals and then reach an effective conclusion. 

Skills required to be a Business Analyst include: 

Programming skills – Programming Skills are not a must for a Business Analyst, but having some is always a plus. For example – knowledge of R and Python can help you in a quick and effective analysis of data.  

Statistical analysis – Business Analysis requires a good knowledge of statistics and knowledge of different statistical methods to interpret real-world situations.  

Business Intelligence tools – Business Intelligence or BI tools enable you to understand different trends and insights from business data, which is important to make impactful decisions. 

Data mining – Data mining is one of the important skills of Business Analysis as it is about digging relevant information from chunks of data. So, companies use software to look for patterns and graphs in data and make relevant business decisions accordingly.

Analytical problem-solving – Business Analysts are about solving issues coming from customers or other stakeholders, so having the skill of analytically solving problems is a must. 

Data visualisation – To make any important and accurate business decisions, the first and foremost step is to visualise or examine data chunks to understand market trends and loopholes.

 Type of Data

Data Scientists work on both structured and unstructured data to fetch insights from huge chunks of data.

Business Analysts are just concerned about the structured data. They work on that data with several Business Intelligence tools to draw insights. 

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Conclusion

By now, you would be well versed with everything you need to distinguish between the two most popular terms today – Data Science and Business Analytics. You began with learning the basics of the two and once you knew their basics you went on to differentiate between them.

While we were checking the differences between Data Science and Business Analytics, we checked several parameters to differentiate them and saw how they are different in the current scenario. While one is more technical and broad, the other one is comparatively less technical but a lot business-oriented and comparatively more specific. 

You not only learned about the difference between the two huge concepts but also saw their differences on the professional level by finally distinguishing between a Data Scientist and a Business Analyst. In that segment you saw how one of them has to be proficient at coding and several statistical tools, after all, they operate on both structured and unstructured data, while the other one needs Business Intelligence tools to work on structured data and draw relevant business insights.

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