| Literature DB >> 31730624 |
Cassandra DeMarshall1,2, Esther Oh3,4, Rahil Kheirkhah5, Frederick Sieber4, Henrik Zetterberg6,7,8,9, Kaj Blennow6,7, Robert G Nagele1,2.
Abstract
Post-operative delirium (POD) is the most common complication following major surgery in non-demented older (>65 y/o) patients. Patients experiencing POD show increased risk for future cognitive decline, including mild cognitive impairment (MCI) and Alzheimer's disease (AD) and, conversely, patients with cognitive decline at surgery show increased risk for POD. Here, we demonstrate that a previously established panel of AD-driven MCI (ADMCI) autoantibody (aAB) biomarkers can be used to detect prodromal AD pre-surgically in individuals admitted into the hospital for hip fracture repair (HFR) surgery. Plasma from 39 STRIDE (STRIDE: A Strategy to Reduce the Incidence of Postoperative Delirium in Elderly Patients) HFR patients and sera from 25 age- and sex-matched non-demented and non-surgical controls were screened using human protein microarrays to measure expression of a panel of 44 previously identified MCI aAB biomarkers. The predictive classification accuracy of the aAB biomarker panel was evaluated using Random Forest (RF). The ADMCI aAB biomarkers successfully distinguished 21 STRIDE HFR patients (CDR = 0.5) from 25 matched non-surgical controls with an overall accuracy of 91.3% (sensitivity = 95.2%; specificity = 88.0%). The ADMCI aAB panel also correctly identified six patients with preoperative CDR = 0 who later converted to CDR = 0.5 or >1 at one-year follow-up. Lastly, the majority of cognitively normal (CDR = 0) STRIDE HFR subjects that were positive for CSF AD biomarkers based on the A/T/N classification system were likewise classified as ADMCI aAB-positive using the biomarker panel. Results suggest that pre-surgical detection of ADMCI aAB biomarkers can readily identify HFR patients with likely early-stage AD pathology using pre-surgery blood samples, opening up the potential for early, blood-based AD detection and improvements in peri- and postoperative patient management.Entities:
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Year: 2019 PMID: 31730624 PMCID: PMC6857922 DOI: 10.1371/journal.pone.0225178
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Baseline demographics.
| STRIDE Subjects Controls | ||||
|---|---|---|---|---|
| Clinical Dementia Rating (CDR) | ||||
| Total | 0 | 0.5 | n/a | |
| (n = 39) | (n = 18) | (n = 21) | (n = 25) | |
| 80.9(8.1) | 77.8(7.1) | 83.5(8.1) | 67.7(6.2) | |
| 8(21) | 4(22) | 4(19) | 12(48) | |
| 31(79) | 14(78) | 17(81) | 13(52) | |
Table 1. The number of individuals (n), age, gender, and ethnicity are listed for each group. For all HFR and MCI subjects, the Clinical Dementia Rating (CDR) score is included as a measure of cognitive impairment. CDR score is not available for Bioserve control subjects.
Detection of Mild Cognitive Impairment in STRIDE HFR patients (CDR = 0.5) using AD-driven MCI biomarkers and Random Forest (RF) analysis.
| NDC | STRIDE CDR = 0.5 | |
|---|---|---|
| 22 | 3 | |
| 1 | 20 |
Table 2. 21 STRIDE CDR = 0.5 were compared to 25 non-demented controls. Using 44 ADMCI aAB biomarkers, 20/21 patients were identified as MCI, while 22/25 non-demented controls were correctly classified as controls.
Diagnostic results using a panel of 44 AD-driven MCI biomarkers and Random Forest (RF).
| Random Forest Analysis | |
|---|---|
| 95.2 | |
| 88.0 | |
| 86.7 | |
| 95.7 | |
| 91.3 | |
| 8.7 | |
Table 3. Diagnostic performance was assessed using Random Forest (RF). RF successfully distinguished STRIDE CDR = 0.5 (n = 21) from non-demented controls (n = 25) with high overall accuracy.
Presurgical AD detection using AD-driven MCI biomarkers and Random Forest (RF) analysis.
| MCI | Converter | |
|---|---|---|
| 21 | 6 | |
| 0 | 0 |
Table 4. Six cognitively normal (CDR = 0) patients that converted to either MCI or AD were compared to the 21 STRIDE CDR = 0.5. Using the same 44 ADMCI aAB biomarkers, all six patients that converted were identified pre-surgically as MCI, suggesting that they had ADMCI aAB biomarker profiles in their blood at levels consistent with the presence of AD-related pathology at the time of surgery.
CSF biomarker profiles of HFR patients with CDR = 0.5 and CDR 0 using the A/T/N classification system.
| CDR 0.5 | MCI | MCI | MCI-SNAP | |
|---|---|---|---|---|
| (unlikely due to AD) | (A+/T-/N-; A+/T+/N-; | (A-/T+/N-; | ||
| (A-/T-/N-) | A+/T+/N+) | A-/T+/N+) | ||
| 0 | 95.2(20/21) | 4.7(1/21) | ||
| Normal | Preclinical AD | SNAP | ||
| (A-/T-/N-) | (A+/T-/N-) | (A+/T+/N-; | (A-/T+/N-; | |
| A+/T-/N+ | A-/T-/N+; | |||
| A+/T+/N+) | A-/T+/N+) | |||
| 11.1(2/18) | 22.2(4/18) | 55.5(10/18) | 11.1(2/18) | |
Table 5. CSF biomarker profiles of HFR patients without dementia (CDR = 0 and 0.5) were categorized according to the A/T/N and corresponding NIA-AA classification system. The vast majority of patients had CSF biomarkers suggestive of preclinical AD. In the CDR = 0.5 group, 95.2% (20/21) of patients had abnormal CSF biomarker levels. The remaining patient was categorized as Suspected Non-Alzheimer’s Pathology (SNAP). In the CDR = 0 group, 11.1% (2/18) samples had normal biomarker levels, while 77.7% (14/18) of patients had abnormal biomarker levels. Cutoff values for each biomarker level considered are as follows: CSF Aβ42/Aβ40 = < 0.8 (CSF Aβ42/40 ratio x 10), CSF p-tau = > 60 pg/ml, and CSF t-tau = > 350 pg/ml.
AD-driven MCI aAB biomarkers are capable of identifying preclinical AD pathology in otherwise cognitively normal (CDR = 0) STRIDE patients.
| NDC | STRIDE CDR = 0 | |
|---|---|---|
| 24 | 1 | |
| 1 | 17 |
Table 6. 18 STRIDE CDR = 0 were compared to 25 non-demented controls. Using 44 ADMCI aAB biomarkers, 17/18 CDR = 0 patients were identified as MCI, suggesting the presence of underlying AD pathology at the time of surgery; 24/25 non-demented controls were correctly classified as controls.