| Literature DB >> 32007958 |
Olli Jääskeläinen1, Anette Hall1, Mika Tiainen2, Mark van Gils3, Jyrki Lötjönen4, Antti J Kangas5, Seppo Helisalmi1, Maria Pikkarainen1, Merja Hallikainen1,6, Anne Koivisto1,6, Päivi Hartikainen6, Mikko Hiltunen7, Mika Ala-Korpela2,5,8,9,10,11, Pasi Soininen2, Hilkka Soininen1,6, Sanna-Kaisa Herukka1,6.
Abstract
Accurate differentiation between neurodegenerative diseases is developing quickly and has reached an effective level in disease recognition. However, there has been less focus on effectively distinguishing the prodromal state from later dementia stages due to a lack of suitable biomarkers. We utilized the Disease State Index (DSI) machine learning classifier to see how well quantified metabolomics data compares to clinically used cerebrospinal fluid (CSF) biomarkers of Alzheimer's disease (AD). The metabolic profiles were quantified for 498 serum and CSF samples using proton nuclear magnetic resonance spectroscopy. The patient cohorts in this study were dementia (with a clinical AD diagnosis) (N = 359), mild cognitive impairment (MCI) (N = 96), and control patients with subjective memory complaints (N = 43). DSI classification was conducted for MCI (N = 51) and dementia (N = 214) patients with low CSF amyloid-β levels indicating AD pathology and controls without such amyloid pathology (N = 36). We saw that the conventional CSF markers of AD were better at classifying controls from both dementia and MCI patients. However, quantified metabolic subclasses were more effective in classifying MCI from dementia. Our results show the consistent effectiveness of traditional CSF biomarkers in AD diagnostics. However, these markers are relatively ineffective in differentiating between MCI and the dementia stage, where the quantified metabolomics data provided significant benefit.Entities:
Keywords: Alzheimer’s disease; cognitive dysfunction; dementia; machine learning; metabolomics
Mesh:
Substances:
Year: 2020 PMID: 32007958 PMCID: PMC7175942 DOI: 10.3233/JAD-191226
Source DB: PubMed Journal: J Alzheimers Dis ISSN: 1387-2877 Impact factor: 4.472
Demographic data for all participants and the subgroup of dementia and MCI with amyloid pathology (CSF Aβ42 < 500 pg/ml) and controls without amyloid pathology (CSF Aβ42 > 500 pg/ml)
| All cases | Amyloid subgroups | |||||
| Dementia | MCI | Controls | Dementia Aβ42 + | MCI Aβ42 + | Controls Aβ42 – | |
| Cases | 359 (72%) | 96 (19%) | 43 (9%) | 214 (71%) | 51 (17%) | 36 (12%) |
| Age, y | 72.8 (7.7) | 70.3 (9.2) | 58.5 (10.9) | 72.0 (8.0) | 71.1 (8.8) | 56.6 (9.9) |
| Sex, female/male | 241/118 (67/33%) | 39/57 (41/59%) | 18/25 (42/58%) | 137/76 (64/36%) | 25/26 (49/51%) | 14/22 (39/61%) |
| MMSE score | 19.3 (4.7) | 24.3 (2.8) | 26.3 (4.8) | 19.1 (4.5) | 24.1 (2.6) | 26.9 (3.7) |
| 241 (72%) | 48 (67%) | 7 (23%) | 161 (80%) | 31 (73%) | 5 (19%) | |
| CSF markers, pg/ml | ||||||
| Aβ42 | 502 (179) | 530 (248) | 767 (266) | 391 (71) | 346 (88) | 836 (220) |
| tTau | 507 (290) | 417 (225) | 223 (111) | 526 (289) | 435 (224) | 211 (93) |
| pTau | 77 (34) | 71 (29) | 51 (19) | 79 (34) | 73 (29) | 52 (19) |
Aβ42, amyloid-β 42; APOE ɛ4, Apolipoprotein E epsilon 4; CSF, cerebrospinal fluid; MCI, mild cognitive impairment; MMSE, Mini-Mental State Examination; pTau, phosphorylated tau; tTau, total tau. Values are displayed as means (standard deviation) or number (percentage). Missing values: 1 for tTau, 68 for MMSE and 59 for APOE.
AUCs from Disease state index classifiers differentiating between healthy controls without amyloid pathology, mild cognitive impairment with amyloid pathology and dementia patients with amyloid pathology. 95% confidence intervals are given with the mean AUC
| AUC [95% CI] | Control versus Dementia | Control versus MCI | MCI versus Dementia |
| Aβ42 | Not included | Not included | 0.65 [0.62–0.67] |
| tTau | 0.90 [0.88–0.91] | 0.82 [0.79–0.85] | 0.58 [0.55–0.60] |
| PTau | 0.78 [0.75–0.80] | 0.75 [0.72–0.79] | 0.49 [0.47–0.52] |
| Lipoproteins | 0.74 [0.72–0.77] | 0.72 [0.68–0.76] | 0.62 [0.59–0.65] |
| Cholesterols | 0.66 [0.63–0.69] | 0.67 [0.63–0.71] | 0.62 [0.59–0.65] |
| Glycerides and phospholipids | 0.69 [0.66–0.72] | 0.62 [0.58–0.66] | 0.51 [0.48–0.53] |
| Fatty acids | 0.66 [0.63–0.69] | 0.66 [0.62–0.70] | 0.54 [0.51–0.56] |
| Energy and ketone bodies | 0.62 [0.59–0.65] | 0.53 [0.49–0.57] | 0.61 [0.58–0.63] |
| Amino acids | 0.70 [0.67–0.73] | 0.66 [0.62–0.70] | 0.54 [0.51–0.57] |
| Energy and ketone bodies | 0.55 [0.51–0.58] | 0.67 [0.63–0.71] | 0.62 [0.59–0.64] |
| Amino acids | 0.65 [0.61–0.68] | 0.65 [0.61–0.69] | 0.58 [0.55–0.60] |
| Organic nitrous | 0.55 [0.53–0.58] | 0.69 [0.66–0.73] | 0.52 [0.50–0.55] |
| Organosulfurs | 0.61 [0.58–0.64] | 0.53 [0.49–0.56] | 0.53 [0.50–0.56] |
Aβ42, amyloid-β 42; AD, Alzheimer’s disease; AUC, area under curve; CSF, cerebrospinal fluid; LMWM, low-molecular-weight metabolites; MCI, mild cognitive impairment; pTau, phosphorylated tau; tTau, total tau.
Fig.1Disease State Fingerprint for MCI with amyloid pathology versus Dementia with amyloid pathology. These figures illustrate a hypothetical case where all measurement values are equal to the median value for the diagnostic group. The numbers are the Disease State Index values for each comparison and range between 0 and 1 and are also reflected in the color scale of the nodes from blue to red. Blue color indicates more similarity MCI, while red indicates a higher similarity to Dementia, and white is equally typical for both diagnoses. The size of a node corresponds to the relevance (Youden index), which is the ability to distinguish the two diagnoses from each other. CSF, cerebrospinal fluid; LMWM, low-molecular-weight metabolites; MCI, mild cognitive impairment.