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News

Purrfect Pals: Cats and kittens for the new year

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Written by: Elizabeth Larson
Published: 06 January 2025
LAKE COUNTY, Calif. — Lake County Animal Care and Control has many cats and kittens at its shelter waiting for homes in the new year.

The kittens and cats at the shelter that are shown on this page have been cleared for adoption.

Call Lake County Animal Care and Control at 707-263-0278 or visit the shelter online for information on visiting or adopting.

The shelter is located at 4949 Helbush in Lakeport.

Email Elizabeth Larson at This email address is being protected from spambots. You need JavaScript enabled to view it.. Follow her on Twitter, @ERLarson, and on Bluesky, @erlarson.bsky.social. Find Lake County News on the following platforms: Facebook, @LakeCoNews; X, @LakeCoNews; Threads, @lakeconews, and on Bluesky, @lakeconews.bsky.social.

 
 
 
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Owen prepares to step into new role as District 1 supervisor

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Written by: LINGZI CHEN
Published: 05 January 2025
District 1 Supervisor-elect Helen Owen. Courtesy photo.

LAKE COUNTY, Calif. — Helen Owen, a longtime Middletown resident and rancher, is getting ready to take office as the new District 1 supervisor.

She is set to take the oath of office this week as she and another new supervisor, Brad Rasmussen, representing District 4, take their seats on the board.

Owen won the District 1 supervisorial race against Planning Commissioner John Hess in the Nov. 5 election.

The Registrar of Voters Office’s finalized 2024 election results showed that Owen received 3,118 votes, or 57.63%, over Hess’ 2,292 votes, or 42.37%.

For both the March and November races, the two had a tight initial count with Hess leading slightly. But Owen caught up in the final counts for both races and won.

Owen quickly began preparing for her transition into the new role, attending her first meeting as supervisor-elect with the county’s Geothermal Advisory Committee last month.

She said the meeting was an opportunity to meet people and to “start getting into the swing.”

Owen said that this is one of the committees she will join as supervisor. The current District 1 supervisor, Moke Simon — Owen’s predecessor — also serves on the committee.

Over the past month, she kept busy, attending a supervisorial training, a Firewise meeting and the Middletown Area Town Hall.

She also gave a helping hand at a Dec. 14 toy distribution held by veterans organizations at the American Legion Post in Clearlake.

“So anything I can make, I’m going to,” Owen said.

When asked about Measure U, the controversial countywide advisory ballot on whether the name of Kelseyville should be changed to Konocti, “I know it failed miserably,” she said of the outcome, where over 70% of voters said “no” to the name change.

Owen knew the matter was coming up at the supervisors’ meeting on Dec. 10, and ahead of it was unsure if a decision would be made. The board voted 3-2 to recommend to the U.S. Board of Geographic Names that the name be changed.

Beside the Geothermal Advisory Committee, Owen said she’s interested in serving committees to do with agriculture, safety, water and transportation such as highways and Caltrans.

“Water is a big one for me,” she said. “I feel that throughout life that’s the most important asset we have and so I would really like to be on.”

Although Owen knows what committees she would like to serve, “I don’t know where I’ll be for sure,” she said, adding that it’s up to the board chair to appoint the different committees.

Before starting the new job, Owen also was working on a plan for her home and ranch, where she and her daughter give rodeo lessons. “I’ve got to hire somebody to take my spot. I found out that my daughter is going to have another baby.”

With hiring additional help at the ranch, “I can devote 100% of my time to the thing,” Owen said of the supervisor role.

“I’ve got the pressures off as far as, you know, the campaign. So it feels better that a little different kind of pressure,” Owen said. “I just don’t want to disappoint people and I want to be the very best supervisor I can be.”

Email staff reporter Lingzi Chen at This email address is being protected from spambots. You need JavaScript enabled to view it..

Helping Paws: Little puppies and big dogs

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Written by: Elizabeth Larson
Published: 05 January 2025
LAKE COUNTY, Calif. — Lake County Animal Care and Control has dogs from tiny puppies to seniors waiting to be adopted at its shelter.

The dogs available for adoption this week include mixes of Anatolian shepherd, Belgian malinois, boxer, cattle dog, Chihuahua, German shepherd, German shorthaired pointer, husky, Labrador Retriever, pit bull terrier and terrier.

Dogs that are adopted from Lake County Animal Care and Control are either neutered or spayed, microchipped and, if old enough, given a rabies shot and county license before being released to their new owner. License fees do not apply to residents of the cities of Lakeport or Clearlake.

Those dogs and the others shown on this page at the Lake County Animal Care and Control shelter have been cleared for adoption.

Call Lake County Animal Care and Control at 707-263-0278 or visit the shelter online for information on visiting or adopting.

The shelter is located at 4949 Helbush in Lakeport.

Email Elizabeth Larson at This email address is being protected from spambots. You need JavaScript enabled to view it.. Follow her on Twitter, @ERLarson, and on Bluesky, @erlarson.bsky.social. Find Lake County News on the following platforms: Facebook, @LakeCoNews; X, @LakeCoNews; Threads, @lakeconews, and on Bluesky, @lakeconews.bsky.social.

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Will AI revolutionize drug development? Researchers explain why it depends on how it’s used

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Written by: Duxin Sun, University of Michigan and Christian Macedonia, University of Michigan
Published: 04 January 2025

 

A high drug failure rate is more than just a pattern recognition problem. Thom Leach/Science Photo Library via Getty Images

The potential of using artificial intelligence in drug discovery and development has sparked both excitement and skepticism among scientists, investors and the general public.

“Artificial intelligence is taking over drug development,” claim some companies and researchers. Over the past few years, interest in using AI to design drugs and optimize clinical trials has driven a surge in research and investment. AI-driven platforms like AlphaFold, which won the 2024 Nobel Prize for its ability to predict the structure of proteins and design new ones, showcase AI’s potential to accelerate drug development.

AI in drug discovery is “nonsense,” warn some industry veterans. They urge that “AI’s potential to accelerate drug discovery needs a reality check,” as AI-generated drugs have yet to demonstrate an ability to address the 90% failure rate of new drugs in clinical trials. Unlike the success of AI in image analysis, its effect on drug development remains unclear.

Pharmacist searching through drawer of drug packages
Behind every drug in your pharmacy are many, many more that failed. nortonrsx/iStock via Getty Images Plus

We have been following the use of AI in drug development in our work as a pharmaceutical scientist in both academia and the pharmaceutical industry and as a former program manager in the Defense Advanced Research Projects Agency, or DARPA. We argue that AI in drug development is not yet a game-changer, nor is it complete nonsense. AI is not a black box that can turn any idea into gold. Rather, we see it as a tool that, when used wisely and competently, could help address the root causes of drug failure and streamline the process.

Most work using AI in drug development intends to reduce the time and money it takes to bring one drug to market – currently 10 to 15 years and US$1 billion to $2 billion. But can AI truly revolutionize drug development and improve success rates?

AI in drug development

Researchers have applied AI and machine learning to every stage of the drug development process. This includes identifying targets in the body, screening potential candidates, designing drug molecules, predicting toxicity and selecting patients who might respond best to the drugs in clinical trials, among others.

Between 2010 and 2022, 20 AI-focused startups discovered 158 drug candidates, 15 of which advanced to clinical trials. Some of these drug candidates were able to complete preclinical testing in the lab and enter human trials in just 30 months, compared with the typical 3 to 6 years. This accomplishment demonstrates AI’s potential to accelerate drug development.

Drug development is a long and costly process.

On the other hand, while AI platforms may rapidly identify compounds that work on cells in a Petri dish or in animal models, the success of these candidates in clinical trials – where the majority of drug failures occur – remains highly uncertain.

Unlike other fields that have large, high-quality datasets available to train AI models, such as image analysis and language processing, the AI in drug development is constrained by small, low-quality datasets. It is difficult to generate drug-related datasets on cells, animals or humans for millions to billions of compounds. While AlphaFold is a breakthrough in predicting protein structures, how precise it can be for drug design remains uncertain. Minor changes to a drug’s structure can greatly affect its activity in the body and thus how effective it is in treating disease.

Survivorship bias

Like AI, past innovations in drug development like computer-aided drug design, the Human Genome Project and high-throughput screening have improved individual steps of the process in the past 40 years, yet drug failure rates haven’t improved.

Most AI researchers can tackle specific tasks in the drug development process when provided with high-quality data and particular questions to answer. But they are often unfamiliar with the full scope of drug development, reducing challenges into pattern recognition problems and refinement of individual steps of the process. Meanwhile, many scientists with expertise in drug development lack training in AI and machine learning. These communication barriers can hinder scientists from moving beyond the mechanics of current development processes and identifying the root causes of drug failures.

Current approaches to drug development, including those using AI, may have fallen into a survivorship bias trap, overly focusing on less critical aspects of the process while overlooking major problems that contribute most to failure. This is analogous to repairing damage to the wings of aircraft returning from the battle fields in World War II while neglecting the fatal vulnerabilities in engines or cockpits of the planes that never made it back. Researchers often overly focus on how to improve a drug’s individual properties rather than the root causes of failure.

Diagram of airplane with clusters of red dots on the wing tips, tail and cockpit areas
While returning planes might survive hits to the wings, those with damage to the engines or cockpits are less likely to make it back. Martin Grandjean, McGeddon, US Air Force/Wikimedia Commons, CC BY-SA

The current drug development process operates like an assembly line, relying on a checkbox approach with extensive testing at each step of the process. While AI may be able to reduce the time and cost of the lab-based preclinical stages of this assembly line, it is unlikely to boost success rates in the more costly clinical stages that involve testing in people. The persistent 90% failure rate of drugs in clinical trials, despite 40 years of process improvements, underscores this limitation.

Addressing root causes

Drug failures in clinical trials are not solely due to how these studies are designed; selecting the wrong drug candidates to test in clinical trials is also a major factor. New AI-guided strategies could help address both of these challenges.

Currently, three interdependent factors drive most drug failures: dosage, safety and efficacy. Some drugs fail because they’re too toxic, or unsafe. Other drugs fail because they’re deemed ineffective, often because the dose can’t be increased any further without causing harm.

We and our colleagues propose a machine learning system to help select drug candidates by predicting dosage, safety and efficacy based on five previously overlooked features of drugs. Specifically, researchers could use AI models to determine how specifically and potently the drug binds to known and unknown targets, the level of these targets in the body, how concentrated the drug becomes in healthy and diseased tissues, and the drug’s structural properties.

These features of AI-generated drugs could be tested in what we call phase 0+ trials, using ultra-low doses in patients with severe and mild disease. This could help researchers identify optimal drugs while reducing the costs of the current “test-and-see” approach to clinical trials.

While AI alone might not revolutionize drug development, it can help address the root causes of why drugs fail and streamline the lengthy process to approval.The Conversation

Duxin Sun, Associate Dean for Research, Charles Walgreen Jr. Professor of Pharmacy and Pharmaceutical Sciences, University of Michigan and Christian Macedonia, Adjunct Professor in Pharmaceutical Sciences, University of Michigan

This article is republished from The Conversation under a Creative Commons license. Read the original article.

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