Intelligent medical diagnosis has become common in the era of big data, although this technique has been applied to asthma only in limited contexts. Using routine blood biomarkers to identify asthma patients would make clinical diagnosis easier to implement and would enhance research of key asthma variables through data mining techniques. We used routine blood data from healthy individuals to construct a Mahalanobis space (MS). Then, we calculated Mahalanobis distances of the training routine blood data from 355 asthma patients and 1,480 healthy individuals to ensure the efficiency of MS. Orthogonal arrays and signal-to-noise ratios were used to optimize blood biomarker variables. Receiver operating characteristic (ROC) curve was used to de...
Chronic asthmatic sufferers need to be constantly observed to prevent sudden attacks. In order to im...
Background The identification of inflammatory asthma phenotypes, using sputum analysis, has proven i...
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, ...
Summary: Background: In asthma, the airway inflammatory phenotype influences clinical characteristic...
Asthma is a common, under-diagnosed disease affecting all ages. We sought to identify a nasal brush-...
Asthma was a chronic inflammatory airway disease which characterized by complex pathogenesis, variou...
Objective: Asthma is divided into various distinct phenotypes on the basis of clinical characteristi...
Background: The U-BIOPRED hypothesis is that performing clustering based on multiple omics platforms...
Asthma is a chronic and airway-induced disease, causing the incidence of bronchus inflammation, brea...
Chronic diseases are one of the major causes of deaths and disabilities worldwide. Rapid industrial ...
There is increasing recognition that asthma and eczema are heterogeneous diseases. We investigated t...
Background: The identification of inflammatory asthma phenotypes, using sputum analysis, has proven ...
Rationale: Stratification of asthma at the molecular level, especially using accessible biospecimens...
Machine learning (ML) is poised as a transformational approach uniquely positioned to discover the h...
Identification and characterization of asthma phenotypes are challenging due to disease complexity a...
Chronic asthmatic sufferers need to be constantly observed to prevent sudden attacks. In order to im...
Background The identification of inflammatory asthma phenotypes, using sputum analysis, has proven i...
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, ...
Summary: Background: In asthma, the airway inflammatory phenotype influences clinical characteristic...
Asthma is a common, under-diagnosed disease affecting all ages. We sought to identify a nasal brush-...
Asthma was a chronic inflammatory airway disease which characterized by complex pathogenesis, variou...
Objective: Asthma is divided into various distinct phenotypes on the basis of clinical characteristi...
Background: The U-BIOPRED hypothesis is that performing clustering based on multiple omics platforms...
Asthma is a chronic and airway-induced disease, causing the incidence of bronchus inflammation, brea...
Chronic diseases are one of the major causes of deaths and disabilities worldwide. Rapid industrial ...
There is increasing recognition that asthma and eczema are heterogeneous diseases. We investigated t...
Background: The identification of inflammatory asthma phenotypes, using sputum analysis, has proven ...
Rationale: Stratification of asthma at the molecular level, especially using accessible biospecimens...
Machine learning (ML) is poised as a transformational approach uniquely positioned to discover the h...
Identification and characterization of asthma phenotypes are challenging due to disease complexity a...
Chronic asthmatic sufferers need to be constantly observed to prevent sudden attacks. In order to im...
Background The identification of inflammatory asthma phenotypes, using sputum analysis, has proven i...
Background and Aim: Data mining is a very important branch in deeper understanding of medical data, ...