| Literature DB >> 30096939 |
Abstract
Conventional methods utilized for clinical diagnosis of gastrointestinal (GI) diseases have employed invasive medical procedures that cause stress, anxiety and pain to patients. These methods are often expensive, time-consuming, and require sophisticated chemical-analysis instruments and advanced modeling procedures to achieve diagnostic interpretations. This paper reviews recent applications of simpler, electronic-nose (e-nose) devices for the noninvasive early diagnosis of a wide range of GI diseases by collective analysis of headspace volatile organic compound (VOC)-metabolites from clinical samples to produce disease-specific aroma signatures (VOC profiles). A different "metabolomics" approach to GI disease diagnostics, involving identifications and quantifications of disease VOC-metabolites, are compared to the electronic-nose approach based on diagnostic costs, accuracy, advantages and disadvantages. The importance of changes in gut microbiome composition that result from disease are discussed relative to effects on disease detection. A new diagnostic approach, which combines the use of e-nose instruments for early rapid prophylactic disease-screenings with targeted identification of known disease biomarkers, is proposed to yield cheaper, quicker and more dependable diagnostic results. Some priority future research needs and coordination for bringing e-nose instruments into routine clinical practice are summarized.Entities:
Keywords: GI-disease biomarkers; bacterial dysbiosis; e-nose devices; early noninvasive diagnoses; electronic aroma detection; healthcare applications; metabolite profiles; point-of-care testing; volatile organic compounds
Mesh:
Substances:
Year: 2018 PMID: 30096939 PMCID: PMC6111575 DOI: 10.3390/s18082613
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Comparisons of key advantages and disadvantages of metabolomic verses electronic-nose analytical technologies for clinical disease detections and diagnoses.
| Technology Types 1 | Evaluation Criteria | Advantages 2 | Disadvantages |
|---|---|---|---|
|
| Analysis costs | Yields more chemistry information and identity of volatile organic compounds (VOCs) in sample | Expensive operating and maintenance costs |
| Clinical and field application | Most useful for confirmation of diagnoses by more rapid disease-detection methods; not portable (immobile) | Not suitable due to untimely results and low-sample throughput | |
| Data analysis | Potentially provides indications of disease mechanisms, host pathways affected, and identity of specific chemical disease biomarkers (more detailed chemical information) | Highly complex, time-consuming, requires sophisticated software and/or models; complex interpretations | |
| Difficulty level | Provides more details of pathophysiology and metabolic conditions of patient; inter-device data comparisons possible | Labor intensive, requires highly trained operating personnel | |
| Time requirements to diagnoses | More detailed chemistry information may yield clues for more accurate diagnoses | Slow diagnostic results, not real-time | |
| Reproducibility | High for clinical samples when prepared with standardized methods & patient histories; low sensor drift over time | Numerous factors may affect volatile organic metabolites (VOMs) and biomarkers identified | |
|
| Analysis costs | Relatively inexpensive (low costs); yields simpler collective signature (profile) of all VOC-metabolites present in sample | Individual VOCs not identified (except with combination-technology e-nose instruments) |
| Clinical and field application | Highly applicable for clinical use, high sample throughput possible, portable for clinical, patient room or field use | Mobility may be limited by power, weight or space requirements | |
| Data analysis | Simpler, more straight-forward analyses with easier interpretations of results | Level of sample discrimination is critical | |
| Difficulty level | Relatively easy to operate and obtain results based on VOC profiles (compared to libraries of reference database) | Inter-device data comparisons (of results) not usually possible | |
| Time requirements to diagnoses | Relatively rapid preliminary diagnoses; reliability greatly improved with ASRDs, real-time results | Confirmations with other diagnostic data may be required | |
| Reproducibility | Precision in sensor outputs generally is an asset of e-nose technologies, but results may vary without adequate QA/QC | Sensor drift over time affects reproducibility; sensor poisoning possible |
1 Technology types for VOC-profile analyses: Metabolomics methods involve the identification and quantification of VOC analytes; electronic-nose methods generally involve analysis of VOCs collectively as a combined profile. 2 Data quality-related abbreviations: ASRDs = application specific reference databases; QA/QC = quality assurance/quality control.
Chemical classes and molecular structures of diverse biomarker metabolites with potential for facilitating the noninvasive early diagnosis of diseases.
| Disease 1 | Pathogen/Cause | Clinical Sample | Biomarker | Chemical Class 2 | Molecular Structure | Reference |
|---|---|---|---|---|---|---|
| ALS | Neurodegenerative | Blood | butylated hydroxytoluene | Phenol deriv. |
| [ |
| Bovine TB |
| Breath | 2,2-dimethyl undecane | Methylated alkane |
| [ |
| Cholera |
| Feces | p-menth-1-en-8-ol | Monoterpene alcohol |
| [ |
| Cryptosporidiosis |
| Feces | indole | Benzopyrrole |
| [ |
| Endometriosis | Unknown | Endometrial tissue | hypoxanthine | Oxypurine |
| [ |
| HNC | Cancer | Urine | 2,6-dimethyl-7-octen-2-ol | Terpenoid |
| [ |
| RCC | Cancer | Urine | 2,5,8-trimethyl-1,2,3,4- tetrahydronaphthalene-1-ol | Benzenoid PAH |
| [ |
| Stomach ulcer |
| Breath | 2-butanone | Aliphatic ketone |
| [ |
1 Disease name abbreviations: ALS = Amyotrophic Lateral Sclerosis; EM = Endometriosis; HNC = Head and Neck Cancer; RCC = Renal Cell Carcinoma; TB = tuberculosis; 2 Abbreviations for chemical classes of biomarkers: PAH = polycyclic aromatic hydrocarbon.
Biomarker VOC-metabolites discovered with potential application for noninvasive early diagnosis of gastrointestinal (GI) diseases.
| GI-Disease 1 | Pathogen/Cause | N = | Method 2 | Sample | VOCs | Biomarker VOC-Metabolites (Chemical Class Abbrev.) 3 | Ref. |
|---|---|---|---|---|---|---|---|
| Amoebic dysentery |
| 50 | HIA | Feces | 1 | Indole (low levels, bpy) | [ |
|
| 33 | GC-MS | Feces | 9 | 2,2,4,4-tetramethyloctane (ma) | [ | |
| Bacterial infections (intestinal) |
| 5 | GC-MS | Feces | 3+ | phenols (bd) | [ |
| 71 | GC-MS | Feces | 6 | Hexanal (ald) | [ | ||
|
| 44 | GC-MS | Feces | 8 | Acetic acid (ca) | [ | |
|
| 45 | SESI-MS | Culture | 3 | Acetonitrile (nit) | [ | |
|
| 20 | GC-MS | Gut | 5 | Lactose (ds) | [ | |
|
| 80 | GC-MS | Culture | 2 | 1-decanol (alc) | [ | |
| BAD | Digestive dysfunction | 110 | FAIMS, GC-MS | Urine | 2 | 2-propanol (alc) | [ |
| Cholera |
| 41 | GC-MS | Feces | 1 | 2-(4-methyl-3-cyclohexen-1-yl)-2-propanol (mta) | [ |
| Coeliac | Gluten sensitive enteropathy | 47 | FAIMS, GC-MS | Urine | 1 | 1, 3, 5, 7 cyclooctatetraene (cod) | [ |
| CRC | Cancer | 133 | FAIMS | Urine | 26 | Complex mixture | [ |
| CRD | Unknown cause of bowel inflammation | 201 | IMR-MS | Breath | 21 | NOx compounds (no) | [ |
| IBD | Immune-induced inflammation | 117 | SIFT-MS | Breath | 6 | 1-octene (ao) | [ |
| IBS | Unknown cause of bowel disorder | 323 | GC-TOF-MS | Breath | 4 | 1,4-cyclohexadiene (trp) | [ |
| LOS | Neonatal bacterial infections | 35 | UPLC-MS | Feces | 10,11-dihydro-12R-hydroxy-leukotriene E4 (leu) * | [ | |
| NEC | Injury-induced intestinal necrosis | 65 | GC-MS | Feces | 4 | Absent (present in controls) | [ |
| UC | Abnormal immune response | 200 | IMR-MS | Breath | 21 | NO (no) | [ |
| VE | Astrovirus, Adenovirus, Norwalk virus | 1, | GC-MS | Feces | 2 | Ammonia (am) | [ |
| Rotavirus | 5 | GC-MS | Feces | 3 | Ethyl dodecanoate (es) | [ |
1 Disease abbreviations: BAD = Bile acid diarrhea; CRC = Colorectal cancer; CRD = Crohn’s disease; IBD = Inflammatory bowel disease; IBS = Irritable bowel syndrome; ID = Infectious diarrhea; LOS = Late-onset sepsis; NEC = necrotizing enterocolitis; UC = ulcerative colitis, VE = viral enteritis. 2 Abbreviations for analytical methods for biomarker identification: FAIMS = field-asymmetric ion Mobility spectrometry; GC-MS = gas chromatography-mass spectrometry; GC-TOF-MS = gas chromatography-time-of-flight mass spectrometry; HIA = hydroxylamine-based indole assay; IMR-MS = ion molecule reaction-mass spectrometry; SESI-MS = secondary electrospray ionization-mass spectrometry; SIFT-MS = selective ion flow tube-mass spectroscopy; UPLC-MS = ultra-performance liquid chromatography-mass spectrometry. 3 Chemical class abbreviations of most significant key biomarker VOCs: alc = alcohol; ald = aldehyde; alk = alkane; alke = alkene; am = amine; ao = acyclic olefin; az = azole; azi = aziridine; bd = benzene derivative; bpy = benzopyrrole; ca = carboxylic acid; cod = cyclooctane derivative; ds = disaccharide; es = ester; fad = furoic acid derivative; kaad = ketoaldonic acid derivative; ket = ketone; leu = leukotriene; ma = methylated alkane; ms = monosaccharide; mta = monoterpene alcohol; nqd = naphthoquinone derivative; nit = nitrile; no = nitrogen oxide; phed = phenol derivative; sa = sugar alcohol; trp = terpenoid; ts = trisaccharide; * = chemicals that are nonvolatile organic compounds (NVOMs).
Recent applications of electronic-nose technologies for the noninvasive early diagnosis of gastrointestinal diseases.
| Disease 1 | Location | Sample | N = | E-Nose Model | Sensor Type/No. 2 | References |
|---|---|---|---|---|---|---|
| BAD | BAD | Urine | 110 | Fox 4000 | MOS 18 | [ |
| Cancer | Colon | Breath | 26 | Experimental | GNP 14 | [ |
| Colon | Fecal | 157 | Cyranose 320 | CBPC 32 | [ | |
| CRC/IBD | Colon | Urine | 92 | WOLF | EC 8, NDIR 2, PID 1 | [ |
| IBD | Intestine | Urine | 62 | Owlstone | FAIMS | [ |
| Colon | Fecal | 83 | Cyranose 320 | CBPC 32 | [ | |
| IBS | Colon | Fecal | 182 | Experimental | GC-MOS 1 | [ |
| Colon | Breath | 234 | V&F Airsense | IMR-MS | [ | |
| ID | Colon | Fecal | 100 | Experimental | GC-MOS 1 | [ |
| LOS | Systemic | Fecal | 76 | Cyranose 320 | CBPC 32 | [ |
| NEC | Colon | Fecal | 27 | Cyranose 320 | CBPC 32 | [ |
1 Disease abbreviations: BAD = Bile acid diarrhea; CRC = Colorectal cancer; IBD = Inflammatory bowel disease; IBS = Irritable bowel syndrome; ID = Infectious diarrhea; LOS = Late-onset sepsis; NEC = Necrotizing enterocolitis. 2 Sensor type abbreviations and number in sensor array: CBPC = carbon black polymer composite; EC = electrochemical sensor; FAIM = field asymmetric ion mobility spectroscopy; GC = gas chromatography; GNP = gold nanoparticles; IMR-MS = ion molecule reaction-mass spectrometry; IMS = ion mobility spectrometry; MOS = metal oxide semiconductor, NDIR = non-dispersive infra-red (optical devices); PID = photo-ionization detector.