The goal of this observational diagnostic study is to evaluate whether an artificial intelligence (AI)-enabled smart stethoscope can accurately detect structural heart disease in school-aged children and adolescents (10-18 years) in Ruyang County, China. The main questions it aims to answer are: Can the smart stethoscope reliably identify students with cardiac murmurs that indicate possible structural heart disease? How well do the sensitivity, specificity, and predictive values of the smart stethoscope compare with standard echocardiography? Researchers will compare AI-assisted stethoscope screening results with echocardiography (gold standard) to see if the device can be used as an effective early screening tool. Participants will: Undergo a heart sound screening using the AI-enabled smart stethoscope (3-5 minutes). If screening is positive, receive a free echocardiogram at Ruyang County People's Hospital. A small sample of students with negative screening results will also receive echocardiography to check for missed cases.
Structural heart disease (SHD), including congenital and acquired cardiac abnormalities, is a leading cause of morbidity in children and adolescents. Cardiac murmurs are common clinical signs, but traditional auscultation has limited accuracy in school or community settings due to examiner variability and limited access to echocardiography. This study evaluates the performance of an artificial intelligence (AI)-enabled smart stethoscope for school-based screening of SHD in primary and secondary students in Ruyang County, China. The device integrates high-sensitivity acoustic sensors, noise-reduction technology, and deep learning algorithms to provide automated interpretations of heart sounds within seconds. Prior validation studies have demonstrated high sensitivity (\>80%) and specificity (\>90%) for congenital heart disease and up to 94% sensitivity and 98% specificity for rheumatic heart disease. Screening will be conducted by trained personnel at four standard cardiac auscultation sites. Students with abnormal AI findings will undergo repeat testing and, if confirmed, will be referred for transthoracic echocardiography at Ruyang County People's Hospital. A subset of students with negative AI screens will also receive echocardiography to estimate false-negative rates. Data will be analyzed using 2×2 contingency tables to compare AI screening results with echocardiography, and diagnostic performance metrics including sensitivity, specificity, positive predictive value, and negative predictive value will be calculated with 95% confidence intervals. Agreement between AI-assisted auscultation and echocardiography will be assessed using Cohen's kappa. This study will provide evidence on the feasibility, accuracy, and scalability of AI-enabled smart stethoscopes for early SHD detection in school-based, low-resource settings.
Study Type
OBSERVATIONAL
Enrollment
10,000
This intervention utilizes the HearTech smart stethoscope, where trained research personnel perform standardized examinations of four cardiac auscultation areas on subjects. The integrated AI algorithm analyzes heart sounds in real time and automatically generates reports. An initial positive detection triggers a repeat testing process, with the algorithm ultimately determining a positive screening result based on three detection outcomes (any two positive). This AI-assisted auscultation system is designed to achieve large-scale, standardized, and highly efficient preliminary heart murmur screening.
Ruyang County People's Hospital
Luoyang, Henan, China
Specificity of AI-enabled smart stethoscope
Proportion of students with a "screening negative" report by the smart stethoscope who are confirmed to have no structural heart disease by transthoracic echocardiography.
Time frame: From enrollment to the end of screen at 4 months.
Positive Predictive Value (PPV) of AI-enabled smart stethoscope
Proportion of students with two consecutive "screening positive" reports by the smart stethoscope who are confirmed to have structural heart disease by echocardiography.
Time frame: From enrollment to the end of screen at 4 months.
Negative Predictive Value (NPV) of AI-enabled smart stethoscope
Proportion of a random subset of students with a "screening negative" report by the smart stethoscope who are confirmed to have no structural heart disease by echocardiography.
Time frame: From enrollment to the end of screen at 4 months.
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