Non-contact Lung Disease Classification via OFDM-based Passive 6G ISAC Sensing
Hasan Mujtaba Buttar, Muhammad Mahboob Ur Rahman, Muhammad Wasim, Nawaz, Adnan Noor Mian, Adnan Zahid, Qammer H. Abbasi

TL;DR
This study introduces a non-contact, OFDM-based passive sensing method using 6G signals to accurately classify five respiratory diseases, demonstrating high accuracy with minimal bandwidth overhead, enabling mass health screening.
Contribution
It presents the first OFDM-based passive lung disease classification system using 6G ISAC sensing, with a new dataset and high-accuracy machine learning models.
Findings
CNN achieved 97% accuracy in classification.
Reliable diagnosis possible with only seven microwave frequencies.
Overhead is only 10.93% of bandwidth, leaving most for communication.
Abstract
This paper is the first to present a novel, non-contact method that utilizes orthogonal frequency division multiplexing (OFDM) signals (of frequency 5.23 GHz, emitted by a software defined radio) to radio-expose the pulmonary patients in order to differentiate between five prevalent respiratory diseases, i.e., Asthma, Chronic obstructive pulmonary disease (COPD), Interstitial lung disease (ILD), Pneumonia (PN), and Tuberculosis (TB). The fact that each pulmonary disease leads to a distinct breathing pattern, and thus modulates the OFDM signal in a different way, motivates us to acquire OFDM-Breathe dataset, first of its kind. It consists of 13,920 seconds of raw RF data (at 64 distinct OFDM frequencies) that we have acquired from a total of 116 subjects in a hospital setting (25 healthy control subjects, and 91 pulmonary patients). Among the 91 patients, 25 have Asthma, 25 have COPD, 25…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring
