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From Signal to Knowledge: The Diagnostic Value of Raw Data in the Artificial Intelligence Prediction of Human Data for the First Time

Authors :
Bingxi He
Yu Guo
Yongbei Zhu
Lixia Tong
Boyu Kong
Kun Wang
Caixia Sun
Hailin Li
Feng Huang
Liwei Wu
Meng Wang
Fanyang Meng
Le Dou
Kai Sun
Tong Tong
Zhenyu Liu
Ziqi Wei
Wei Mu
Shuo Wang
Zhenchao Tang
Shuaitong Zhang
Jingwei Wei
Lizhi Shao
Mengjie Fang
Juntao Li
Shouping Zhu
Lili Zhou
Di Dong
Huimao Zhang
Jie Tian
Source :
Engineering, Vol 34, Iss , Pp 60-69 (2024)
Publication Year :
2024
Publisher :
Elsevier, 2024.

Abstract

Encouraging and astonishing developments have recently been achieved in image-based diagnostic technology. Modern medical care and imaging technology are becoming increasingly inseparable. However, the current diagnosis pattern of signal to image to knowledge inevitably leads to information distortion and noise introduction in the procedure of image reconstruction (from signal to image). Artificial intelligence (AI) technologies that can mine knowledge from vast amounts of data offer opportunities to disrupt established workflows. In this prospective study, for the first time, we develop an AI-based signal-to-knowledge diagnostic scheme for lung nodule classification directly from the computed tomography (CT) raw data (the signal). We find that the raw data achieves almost comparable performance with CT, indicating that it is possible to diagnose diseases without reconstructing images. Moreover, the incorporation of raw data through three common convolutional network structures greatly improves the performance of the CT models in all cohorts (with a gain ranging from 0.01 to 0.12), demonstrating that raw data contains diagnostic information that CT does not possess. Our results break new ground and demonstrate the potential for direct signal-to-knowledge domain analysis.

Details

Language :
English
ISSN :
20958099
Volume :
34
Issue :
60-69
Database :
Directory of Open Access Journals
Journal :
Engineering
Publication Type :
Academic Journal
Accession number :
edsdoj.8720ca31903c4bf5a52e61aade662a79
Document Type :
article
Full Text :
https://doi.org/10.1016/j.eng.2023.02.013