Close Menu
    Facebook X (Twitter) Instagram
    TRENDING :
    • Leaders shouldn’t toss around the ‘AI’ buzzword in layoffs. Here’s why
    • Unitree’s new robot is like a giant Transformer come to life
    • Want to raise successful kids? Harvard research says it all comes down to 1 simple word
    • Yeti’s wordmark is its best brand asset. It just got rid of it in a new ad
    • Culture is infrastructure—and Stockholm is betting on it
    • Half A Million Waiting In Libya To Invade Europe
    • Anthropic courts mom-and-pop shops with Claude for Small Business
    • They Are LYING About Inflation
    Populist Bulletin
    • Home
    • US Politics
    • World Politics
    • Economy
    • Business
    • Headline News
    Populist Bulletin
    Home»Business»How AI-supported stethoscopes could help doctors diagnose disease better
    Business 6 Mins Read

    How AI-supported stethoscopes could help doctors diagnose disease better

    Business 6 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Telegram Email Copy Link
    Follow Us
    Google News Flipboard
    Share
    Facebook Twitter LinkedIn Pinterest Email

    When someone opens the door and enters a hospital room, wearing a stethoscope is a telltale sign that they’re a clinician. This medical device has been around for over 200 years and remains a staple in the clinic despite significant advances in medical diagnostics and technologies.

    The stethoscope is a medical instrument used to listen to and amplify the internal sounds produced by the body. Physicians still use the sounds they hear through stethoscopes as initial indicators of heart or lung diseases. For example, a heart murmur or crackling lungs often signify an issue is present. Although there have been significant advances in imaging and monitoring technologies, the stethoscope remains a quick, accessible, and cost-effective tool for assessing a patient’s health.

    Though stethoscopes remain useful today, audible symptoms of disease often appear only at later stages of illness. At that point, treatments are less likely to work and outcomes are often poor. This is especially the case for heart disease, where changes in heart sounds are not always clearly defined and may be difficult to hear.

    We are scientists and engineers who are exploring ways to use heart sounds to detect disease earlier and more accurately. Our research suggests that combining stethoscopes with artificial intelligence could help doctors be less reliant on the human ear to diagnose heart disease, leading to more timely and effective treatment.

    History of the stethoscope

    The invention of the stethoscope is widely credited to the 19th-century French physician René Theophile Hyacinthe Laënnec. Before the stethoscope, physicians often placed their ear directly on a patient’s chest to listen for abnormalities in breathing and heart sounds.

    In 1816, a young girl showing symptoms of heart disease sought consultation with Laënnec. Placing his ear on her chest, however, was considered socially inappropriate. Inspired by children transmitting sounds through a long wooden stick, he instead rolled a sheet of paper to listen to her heart. He was surprised by the sudden clarity of the heart sounds, and the first stethoscope was born.

    Over the next couple of decades, researchers modified the shape of this early stethoscope to improve its comfort, portability, and sound transmission. This includes the addition of a thin, flat membrane called a diaphragm that vibrates and amplifies sound.

    The next major breakthrough occurred in the mid-1850s, when Irish physician Arthur Leared and American physician George Philip Cammann developed stethoscopes that could transmit sounds to both ears. These binaural stethoscopes use two flexible tubes connected to separate earpieces, allowing clearer and more balanced sound by reducing outside noise.

    These early models are remarkably similar to the stethoscopes medical doctors use today, with only slight modifications mainly designed for user comfort.

    Listening to the heart

    Medical schools continue to teach the art of auscultation—the use of sound to assess the function of the heart, lungs, and other organs. Digital models of stethoscopes, which have been commercially available since the early 2000s, offer new tools like sound amplification and recording—yet the basic principle that Laënnec introduced endures.

    When listening to the heart, doctors pay close attention to the familiar “lub-dub” rhythm of each heartbeat. The first sound—the lub—happens when the valves between the upper and lower chambers of the heart close as it contracts and pushes blood out to the body. The second sound—the dub—occurs when the valves leading out of the heart close as the heart relaxes and refills with blood.

    Along with these two normal sounds, doctors also listen for unusual noises—such as murmurs, extra beats, or clicks—that can point to problems with how blood is flowing or whether the heart valves are working properly.

    Heart sounds can vary greatly depending on the type of heart disease present. Sometimes, different diseases produce the same abnormal sound. For example, a systolic murmur—an extra sound between first and second heart sounds—may be heard with narrowing of either the aortic or pulmonary valve. Yet the very same murmur can also appear when the heart is structurally normal and healthy. This overlap makes it challenging to diagnose disease based solely on the presence of murmurs.

    Teaching AI to hear what people can’t

    AI technology can identify the hidden differences in the sounds of healthy and damaged hearts and use them to diagnose disease before traditional acoustic changes like murmurs even appear. Instead of relying on the presence of extra or abnormal sounds to diagnose disease, AI can detect differences in sound that are too faint or subtle for the human ear to detect.

    To build these algorithms, researchers record heart sounds using digital stethoscopes. These stethoscopes convert sound into electronic signals that can be amplified, stored, and analyzed using computers. Researchers can then label which sounds are normal or abnormal to train an algorithm to recognize patterns in the sounds it can then use to predict whether new sounds are normal or abnormal.

    Researchers are developing algorithms that can analyze digitally recorded heart sounds in combination with digital stethoscopes as a low-cost, noninvasive, and accessible tool to screen for heart disease. However, a lot of these algorithms are built on datasets of moderate-to-severe heart disease. Because it is difficult to find patients at early stages of disease, prior to when symptoms begin to show, the algorithms don’t have much information on what hearts in the earliest stages of disease sound like.

    To bridge this gap, our team is using animal models to teach the algorithms to analyze heart sounds to find early signs of disease. After training the algorithms on these sounds, we assess their accuracy by comparing them with image scans of calcium buildup in the heart. Our research suggests that an AI-based algorithm can classify healthy heart sounds correctly over 95% of the time and can even differentiate between types of heart disease with nearly 85% accuracy. Most importantly, our algorithm is able to detect early stages of disease, before cardiac murmurs or structural changes appear.

    We believe teaching AI to hear what humans can’t could transform how doctors diagnose and respond to heart disease.

    Valentina Dargam is a research assistant professor of biomedical engineering at Florida International University.

    Joshua Hutcheson is an associate professor of biomedical engineering at Florida International University.

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



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

    Related Posts

    Leaders shouldn’t toss around the ‘AI’ buzzword in layoffs. Here’s why

    May 14, 2026

    Unitree’s new robot is like a giant Transformer come to life

    May 14, 2026

    Want to raise successful kids? Harvard research says it all comes down to 1 simple word

    May 14, 2026
    Top News
    Economy 3 Mins Read

    Market Talk – December 3, 2025

    Economy 3 Mins Read

    ASIA: The major Asian stock markets had a mixed day today: • NIKKEI 225 increased…

    7 Key Strategies for Managing Training and Development

    April 25, 2026

    Nick Fuentes’s mastery of the online far-right has fractured the MAGA movement 

    November 24, 2025

    Selling to machines: How AI will change e-commerce

    November 21, 2025
    Top Trending
    Business 6 Mins Read

    Leaders shouldn’t toss around the ‘AI’ buzzword in layoffs. Here’s why

    Business 6 Mins Read

    Layoffs used to be something that made a company’s stock tank. But…

    Business 5 Mins Read

    Unitree’s new robot is like a giant Transformer come to life

    Business 5 Mins Read

    On May 12, Unitree Robotics founder Wang Xingxing climbed into the chest…

    Business 5 Mins Read

    Want to raise successful kids? Harvard research says it all comes down to 1 simple word

    Business 5 Mins Read

    All writing is autobiographical. Even if you’re not explicitly writing about your own experience, it shows…

    Categories
    • Business
    • Economy
    • Headline News
    • Top News
    • US Politics
    • World Politics
    About us

    The Populist Bulletin was founded with a fervent commitment to inform, inspire, empower and spark meaningful conversations about the economy, business, politics, government accountability, globalization, and the preservation of American cultural heritage.

    We are devoted to delivering straightforward, unfiltered, compelling, relatable stories that resonate with the majority of the American public, while boldly challenging false mainstream narratives that seem to only serve entrenched elitists, and foreign interests.

    Top Picks

    Leaders shouldn’t toss around the ‘AI’ buzzword in layoffs. Here’s why

    May 14, 2026

    Unitree’s new robot is like a giant Transformer come to life

    May 14, 2026

    Want to raise successful kids? Harvard research says it all comes down to 1 simple word

    May 14, 2026
    Categories
    • Business
    • Economy
    • Headline News
    • Top News
    • US Politics
    • World Politics
    Copyright © 2025 Populist Bulletin. All Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.