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Best UEBA Use Cases to Implement in Healthcare

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Security is essential for all industries, but healthcare faces more pressure than most. Hospitals store vast amounts of highly sensitive information, making them ideal targets for cybercrime, so their defenses must be extensive. User and entity behavioral analytics (UEBA) are one of the most helpful tools in that endeavor.

The medical sector is no stranger to artificial intelligence, but most medical AI applications focus on patient care or administrative work. Applying it to cybersecurity in the form of UEBA is a crucial step forward.

What Is User and Entity Behavioral Analytics?

User and entity behavioral analytics use machine learning to detect threats like breached accounts or ransomware. While protections like multi-factor authentication try to prevent attacks, UEBA instead focuses on stopping threats that slip through the cracks before they can cause much damage.

UEBA analyzes how different users and entities — like routers or Internet of Things (IoT) devices — behave on a network. After establishing baselines for normal behavior, machine learning tools can detect suspicious activity. They may see an account trying to access a database it rarely needs or downloading something at an odd time and flag it as a potential breach.

This process is similar to how your bank may freeze your credit card if you make a few unusual purchases. However, it applies the concept to network behavior and uses AI to make it faster and more accurate.

UEBA Benefits

UEBA use cases have many benefits spanning multiple applications. Here’s a brief look at some of their most significant.

Accuracy

Behavioral analytics systems are highly accurate. Machine learning can pick up on trends and patterns in data humans may miss, so UEBA tools can outperform human analysts when determining what is and isn’t suspicious. When properly applied, UEBA can also yield false positive rates as low as 3%, ensuring security teams don’t waste their time or resources.

UEBA can achieve higher accuracies than rule-based monitoring systems because it’s adaptive. Machine learning algorithms continually gather new data and adjust their decision-making as trends shift. That way, they can account for nuances like users slowly adopting new habits or activities being normal in some situations but not others.

Efficiency

Another benefit of UEBA is it’s fast. Machine learning tools can detect and classify anomalies almost instantly when it may take a human a few minutes. Even if those time savings are just a few seconds, they can make a considerable difference when dealing with cyber threats.

UEBA tools can often detect suspicious behavior before an account or breached device causes any real damage. By identifying and isolating threats earlier, they can dramatically reduce the impact of an attack. IBM found reducing data breach response timelines saves organizations $1.12 million on average.

Versatility

UEBA is also versatile compared to similar security tools. Some organizations employ user behavior analytics (UBA), which provides similar benefits but only looks at user activity. By also including entities, UEBA expands its detection capabilities to IoT attacks and other hardware breaches, helping prevent a broader range of incidents.

Machine learning tools like UEBA are also more versatile than rule-based anomaly detection. AI models can adapt to changing situations and account for situational differences, which rule-based systems can’t. That flexibility is vital for healthcare organizations, as telehealth has grown 38 times over its pre-COVID levels, meaning more medical staff may access systems from changing locations.

UEBA Use Cases in Healthcare

These benefits are impressive, but how much medical companies experience them depends on how they apply this technology. In that spirit, here are the five best user and entity behavior analytics use cases in healthcare.

1. Automating Risk Management

Risk management automation is one of healthcare organizations’ most beneficial UEBA use cases. IT monitoring is crucial in this industry, but many businesses need more time or staff to manage it manually. Cybersecurity talent faces a skills gap across all sectors, and over 70% of medical workers say they already work more hours because of electronic health records (EHRs).

UEBA reduces that burden by handling network threat detection without manual input. Hospitals don’t need large security teams to monitor their systems 24/7 because AI will do it for them.

Because UEBA is so accurate and efficient, medical staff can use electronic systems more efficiently. There will be fewer verification stops or run-ins because of false positives, helping reduce the burden of EHRs. Those time savings improve both cybersecurity and patient care.

2. Detecting EHR Breaches

UEBA has many advantageous specific use cases under the automation umbrella, too. One of the most relevant for healthcare organizations is detecting and responding to breaches in EHR systems.

Electronic records make it far easier to manage patient data, but they also introduce significant security risks. There were over 700 health record breaches of 500 records or more in 2022 alone, with an average of almost two breaches daily. Given this issue’s common and severe, UEBA is an indispensable tool.

UEBA can recognize when an app or account is accessing an unusual amount of records or interacting with them atypically. It can then lock the user or entity in question before it can delete, download, or share these files, preventing a breach.

3. Stopping Ransomware Attacks

Ransomware prevention is another leading UEBA use case in healthcare. The rise of ransomware-as-a-service has made these attacks increasingly common, and the medical industry is a prime target.

Ransomware attacks against healthcare organizations have more than doubled between 2016 and 2021. Stopping these incidents early is critical to minimizing damage and protecting patients’ privacy. UEBA provides that speed.

Before ransomware can steal or lock any files, it must access them all. However, UEBA will notice an unknown program suddenly trying to access a large amount of data. It can then restrict access and isolate the file, account or device from which the ransomware spreads before it can encrypt anything. That way, hospitals can prevent ransomware before losing any sensitive information.

4. Preventing Insider Threats

UEBA is also a valuable tool for addressing insider threats, which are particularly prevalent in healthcare. In fact, insider error accounts for more than twice as many breached medical records as malicious activity. Because UEBA detects all anomalies — not just those from outsiders — it can help find and prevent these mistakes.

If a doctor, nurse or other staff member tried to access something they don’t usually need, UEBA would flag it as suspicious. If it were just an accident, this stoppage would bring the issue to the employee’s attention, letting them see and correct their mistake; if it were a malicious insider, UEBA would stop them from abusing their privileges.

UEBA can detect more than just unusual access activity too. It can also identify and stop actions like sharing credentials or attempts to send files to unauthorized users. That way, it can prevent employees from falling for phishing attempts, which account for most insider threats.

5. Securing IoT Endpoints

As IoT adoption in healthcare grows, IoT security becomes an increasingly advantageous UEBA use case. The IoT falls out of the scope of traditional user behavior analytics use cases because UBA systems don’t account for devices, only people. By contrast, UEBA includes endpoints, so it can address IoT concerns.

Just as UEBA spots irregular behavior in user accounts, it can detect unusual connections or access attempts from IoT devices. Consequently, it can stop hackers from using a smart device with low built-in security as a gateway to more sensitive systems and data.

Stopping this lateral movement is crucial, as IoT devices typically have weak security, and hospitals use a lot of them. More than half of all medical IoT devices also feature critical known vulnerabilities, so improving IoT security is essential for the industry.

Behavioral Analytics Are a Must for Healthcare

These UEBA use cases scratch the surface of what this technology can do for medical organizations. As EHR adoption and cybercrime both rise, capitalizing on these applications will become all the more important.

The healthcare industry must take cybercrime seriously. User and entity behavioral analytics systems are some of the most effective tools for that goal.

Featured Image Credit: Provided by the Author; Pexels; Thank you!

Zac Amos

Zac is the Features Editor at ReHack, where he covers tech trends ranging from cybersecurity to IoT and anything in between.

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Fintech Kennek raises $12.5M seed round to digitize lending

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Google eyed for $2 billion Anthropic deal after major Amazon play


London-based fintech startup Kennek has raised $12.5 million in seed funding to expand its lending operating system.

According to an Oct. 10 tech.eu report, the round was led by HV Capital and included participation from Dutch Founders Fund, AlbionVC, FFVC, Plug & Play Ventures, and Syndicate One. Kennek offers software-as-a-service tools to help non-bank lenders streamline their operations using open banking, open finance, and payments.

The platform aims to automate time-consuming manual tasks and consolidate fragmented data to simplify lending. Xavier De Pauw, founder of Kennek said:

“Until kennek, lenders had to devote countless hours to menial operational tasks and deal with jumbled and hard-coded data – which makes every other part of lending a headache. As former lenders ourselves, we lived and breathed these frustrations, and built kennek to make them a thing of the past.”

The company said the latest funding round was oversubscribed and closed quickly despite the challenging fundraising environment. The new capital will be used to expand Kennek’s engineering team and strengthen its market position in the UK while exploring expansion into other European markets. Barbod Namini, Partner at lead investor HV Capital, commented on the investment:

“Kennek has developed an ambitious and genuinely unique proposition which we think can be the foundation of the entire alternative lending space. […] It is a complicated market and a solution that brings together all information and stakeholders onto a single platform is highly compelling for both lenders & the ecosystem as a whole.”

The fintech lending space has grown rapidly in recent years, but many lenders still rely on legacy systems and manual processes that limit efficiency and scalability. Kennek aims to leverage open banking and data integration to provide lenders with a more streamlined, automated lending experience.

The seed funding will allow the London-based startup to continue developing its platform and expanding its team to meet demand from non-bank lenders looking to digitize operations. Kennek’s focus on the UK and Europe also comes amid rising adoption of open banking and open finance in the regions.

Featured Image Credit: Photo from Kennek.io; Thank you!

Radek Zielinski

Radek Zielinski is an experienced technology and financial journalist with a passion for cybersecurity and futurology.

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Fortune 500’s race for generative AI breakthroughs

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Deanna Ritchie


As excitement around generative AI grows, Fortune 500 companies, including Goldman Sachs, are carefully examining the possible applications of this technology. A recent survey of U.S. executives indicated that 60% believe generative AI will substantially impact their businesses in the long term. However, they anticipate a one to two-year timeframe before implementing their initial solutions. This optimism stems from the potential of generative AI to revolutionize various aspects of businesses, from enhancing customer experiences to optimizing internal processes. In the short term, companies will likely focus on pilot projects and experimentation, gradually integrating generative AI into their operations as they witness its positive influence on efficiency and profitability.

Goldman Sachs’ Cautious Approach to Implementing Generative AI

In a recent interview, Goldman Sachs CIO Marco Argenti revealed that the firm has not yet implemented any generative AI use cases. Instead, the company focuses on experimentation and setting high standards before adopting the technology. Argenti recognized the desire for outcomes in areas like developer and operational efficiency but emphasized ensuring precision before putting experimental AI use cases into production.

According to Argenti, striking the right balance between driving innovation and maintaining accuracy is crucial for successfully integrating generative AI within the firm. Goldman Sachs intends to continue exploring this emerging technology’s potential benefits and applications while diligently assessing risks to ensure it meets the company’s stringent quality standards.

One possible application for Goldman Sachs is in software development, where the company has observed a 20-40% productivity increase during its trials. The goal is for 1,000 developers to utilize generative AI tools by year’s end. However, Argenti emphasized that a well-defined expectation of return on investment is necessary before fully integrating generative AI into production.

To achieve this, the company plans to implement a systematic and strategic approach to adopting generative AI, ensuring that it complements and enhances the skills of its developers. Additionally, Goldman Sachs intends to evaluate the long-term impact of generative AI on their software development processes and the overall quality of the applications being developed.

Goldman Sachs’ approach to AI implementation goes beyond merely executing models. The firm has created a platform encompassing technical, legal, and compliance assessments to filter out improper content and keep track of all interactions. This comprehensive system ensures seamless integration of artificial intelligence in operations while adhering to regulatory standards and maintaining client confidentiality. Moreover, the platform continuously improves and adapts its algorithms, allowing Goldman Sachs to stay at the forefront of technology and offer its clients the most efficient and secure services.

Featured Image Credit: Photo by Google DeepMind; Pexels; Thank you!

Deanna Ritchie

Managing Editor at ReadWrite

Deanna is the Managing Editor at ReadWrite. Previously she worked as the Editor in Chief for Startup Grind and has over 20+ years of experience in content management and content development.

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UK seizes web3 opportunity simplifying crypto regulations

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Deanna Ritchie


As Web3 companies increasingly consider leaving the United States due to regulatory ambiguity, the United Kingdom must simplify its cryptocurrency regulations to attract these businesses. The conservative think tank Policy Exchange recently released a report detailing ten suggestions for improving Web3 regulation in the country. Among the recommendations are reducing liability for token holders in decentralized autonomous organizations (DAOs) and encouraging the Financial Conduct Authority (FCA) to adopt alternative Know Your Customer (KYC) methodologies, such as digital identities and blockchain analytics tools. These suggestions aim to position the UK as a hub for Web3 innovation and attract blockchain-based businesses looking for a more conducive regulatory environment.

Streamlining Cryptocurrency Regulations for Innovation

To make it easier for emerging Web3 companies to navigate existing legal frameworks and contribute to the UK’s digital economy growth, the government must streamline cryptocurrency regulations and adopt forward-looking approaches. By making the regulatory landscape clear and straightforward, the UK can create an environment that fosters innovation, growth, and competitiveness in the global fintech industry.

The Policy Exchange report also recommends not weakening self-hosted wallets or treating proof-of-stake (PoS) services as financial services. This approach aims to protect the fundamental principles of decentralization and user autonomy while strongly emphasizing security and regulatory compliance. By doing so, the UK can nurture an environment that encourages innovation and the continued growth of blockchain technology.

Despite recent strict measures by UK authorities, such as His Majesty’s Treasury and the FCA, toward the digital assets sector, the proposed changes in the Policy Exchange report strive to make the UK a more attractive location for Web3 enterprises. By adopting these suggestions, the UK can demonstrate its commitment to fostering innovation in the rapidly evolving blockchain and cryptocurrency industries while ensuring a robust and transparent regulatory environment.

The ongoing uncertainty surrounding cryptocurrency regulations in various countries has prompted Web3 companies to explore alternative jurisdictions with more precise legal frameworks. As the United States grapples with regulatory ambiguity, the United Kingdom can position itself as a hub for Web3 innovation by simplifying and streamlining its cryptocurrency regulations.

Featured Image Credit: Photo by Jonathan Borba; Pexels; Thank you!

Deanna Ritchie

Managing Editor at ReadWrite

Deanna is the Managing Editor at ReadWrite. Previously she worked as the Editor in Chief for Startup Grind and has over 20+ years of experience in content management and content development.

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