An artificial intelligence (AI) algorithm that uses positron-emission tomography (PET) improves the ability of brain imaging to predict Alzheimer's disease…
An artificial intelligence (AI) algorithm that uses positron-emission tomography (PET) improves the ability of brain imaging to predict Alzheimer’s disease (AD) at an early stage, new research shows.
Investigators studied more than 2000 prospective 18F fluorodeoxyglucose ( 18 F-FDG) PET images taken from 1000 patients from the Alzheimer’s Disease Neuroimaging Initiative (ADNI).
The algorithm successfully “learned” to identify the metabolic patterns that corresponded to AD.
When the algorithm was tested on an independent Set of 40 images from 40 never-studied patients, it achieved 100% sensitivity to detecting the disease a mean of more than 6 years before the final diagnosis.
“The key point of our study is that our algorithm not only successfully detects AD but actually detects it 6 years before the diagnosis is made, “corresponding author Jae Ho Sohn, MD, of the Department of Radiology and Biomedical Imaging, University of California, San Francisco, Customs Medscape Medical News .
“In order to develop treatments for AD, and even for the patient’s sake, it is better to know about the disease early, because at the time it is diagnosed, there is usually too much brain volume loss and little we can do to help the pat ient, “he said.
The study was published online November 6th in Radiology .
Advances in diagnostic technology, such as 1
8 F-FDG PET imaging, allow earlier diagnosis and treatment of AD, but 18 F-FDG PET currently requires interpretation by nuclear medicine neuroimaging specialists “to make pattern recognition decisions mostly using qualitative readings, [which is] particularly challenging in the setting of a disease that involves a wide continuous spectrum from normal cognition to MCI [mild cognitive impairment] to AD, “the authors write.
” Deep Learning “may” assist in addressing the increasing complexity and volume of imaging data, as well as the varying expertise of trained imaging physicians, “they add.”
Although this model has been studied with respect to other diseases, its application to brain imaging is “only beginning to be explored,” the authors note.
“There has Long been suspected that some pattern in the way we study FDG uptake in the brain can signify signs of AD or be an early prediction of AD developing over time, but unfortunately there has not been a really definitive method, “Sohn remarked.
“In tegenstelling tot een hersentumor of seizureproces, waar u daadwerkelijk een focal areaverlichting kunt zien, is AD-ontwikkeling subtiel, en het is diffus en present in de hele hersenen – en hoewel het voor bepaalde regio’s voorspelt, zijn er geen focal bevindingen , “he explains.
” PET artificial intelligence is gaining immense popularity in the press and research as a type of precision algorithm that is nonlinear in property and allows us to recapture subtle yet diffuse findings in an efficient manner, “he said.
To investigate whether a deep learning algorithm (deep learning model Inception V3) could be trained to predict the final clinical diagnoses of patients who underwent PET brain imaging and, once trained, how its resu lts compared to the actual diagnoses arrived at by current clinical reading methods, the researchers employed 2109 prospective 18 F-FDG PET brain images from ADNI imaging studies conducted from 2005 to 2017 (n = 1002 patients).  Whether this dataset, 90% (1921 imaging studies, 899 patients) were used for model training and internal validation. The remaining 10% (188 imaging studies, 103 patients) were used for model testing; These images served as the internal test set.
The researchers also used an additional test set obtained from their institution (the “independent test set”). 18 F-FDG PET imaging studies from 40 patients who were not enrolled in the ADNI. The dates for these imaging studies ranged from 2006 to 2016.
Final clinical diagnosis determined after all follow-up examinations were used as the ground truth label for both data sets.
Three nuclear medicine physicians independently interpreted the 40 18 F-FDG PET imaging studies in the independent test set.
The average age of male patients in the ADNI study was 76 years (range, 55 years ); De gemiddelde leeftijd van de vrouwelijke patiënten was 75 jaar (bereik, 55 tot 96) ( P <.001). Overall, 54% of the patients were men (547 or 1002); by imaging study, 58% of the patients were men (1225 or 2109).
The average follow-up period was 54 months by patient and 62 months by imaging study.
Of the 40 patients in the independent test set , seven were clinically diagnosed as having AD, seven as having MCI, and 26 as having non-AD / MCI at the end of the follow-up period.
The average age of these male patients was 66 years (range, 48 two 84 years); for female patients, the average age was 71 years (range 41 to 84).
The overall percentage of men in the independent test set was 58% (23 or 40). De gemiddelde follow-up periode van patiënten in de onafhankelijke testset was 76 maanden. In de AD-groep, de gemiddelde follow-up was 82 maanden; in the MCI group, it was 75 months; and in the non-AD / MCI group, it was 74 months.
Inception V3 was trained on 90% of ADNI data and was tested on the remaining 10%. The receiver operating characteristic (ROC) curve of the deep learning mode yielded an area under the curve (AUC) for prediction of AD or 0.92; for MCI, it was 0.63; and for non-AD / MCI, it was 0.73.
These findings indicated that the deep learning network had reasonable ability to distinguish patients who finally progressed to AD at the time of imaging from those who stayed to have MCI or non- AD / MCI, but was weaker to discriminate patients with MCI from the others, “the authors state.
The sensitivity for the prediction of AD, MCI, and non-AD / MCI was 81% (29 or 36), 54 % (43 or 79) and 59% (43 or 73) respectively.
Specificity was also high at 94% (143 or 152), 68% (74 or 109), and 75% (86 or 115 ).
Precision was 76% (29 or 38), 55% (43 or 78), and 60% (43 or 72), respectively.
The ROC tested on independent test set yielded an AUC for the prediction of AD, MCI, and non-AD / MCI or 0.98 (95% confidence interval [CI]0.94-1.00), 0.52 (95% CI, 0.34-0.01), and 0.84 (95% CI, 0.70-0.99 ), respectively.
When the researchers chose the class with the highest probability as the c lassification result, the sensitivity was 100% (7 or 7), 43% (3 or 7), and 35% (9 or 26) for the prediction of AD, MCI, and non-AD / MCI, respectively.
The specificity was found to be 82% (27 or 33), 58% (19 or 33), and 93% (13 or 14), and the precision was 54% (7 or 13), 18% , and 90% (9 or 10) in the prediction of AD, MCI, and non-AD / MCI, respectively.
“With a perfect sensitivity rate and reasonable specificity on AD, the model preserves a strong ability to predict the
Compared with the radiology readers, the deep learning model performed statistically significantly better in recognizing patients who would go on to receive a clinical diagnosis of AD.
It also performed better on the independent test set to recognize patients with neither AD nor MCI. Det var imidlertid vanskeligere at anerkende patienter som ville utvikle MCI, men hvis tilstand ikke ville gå videre til AD, selv om denne undersøkelse var uten statistisk betydning.
“I forutse den endelige diagnosen av AD på den uafhængige test set readers in ROC space, “the authors note.
” Although there were false positives, the fact that the algorithm could detect every case of AD is a big feat, “said Sohn.
” I see this algorithm as complementing the work of radiologists, especially in conjunction with other biochemical and imaging tests, “he added.
Commenting on the study for Medscape Medical News, Arthur Toga, PhD, Laboratory of Neuroimaging , USC Stevens Neuroimaging and Informatics Institute, Keck School of Medicine of University of Southern California, Los Angeles, who was not involved with the study, said that the “authors trained a deep learning model that g ave a more accurate prediction of AD and MCI than professional human radiology readers. “
The authors also provided the structure and hyperparameters of their neural network model, which can be used as a reference for further improvement,” he noted
The findings have implications for clinical use, Toga said. “As the sophistication of deep learning models continues to improve, we are certain to see wider adoption in clinical practice as a decision support tool.”
He noted that although 18 F-FDG PET is “one of the tools used in AD diagnosis,” the high costs of scans, which the authors note, “remain a challenge.”
Sohn added, “One limitation of our study is that it is on the smaller side, only 40 patients, so it calls for further validation with larger datasets at different institutions, which is a necessary step before the findings can be integrated into clinical care. “
An accompanying editorial by Mykol Larvie, MD, of the D Ivision of Neuroradiology, Department of Nuclear Medicine, Cleveland Clinic, Ohio, stated that the researchers’ machine learning application and description of the trial data are “adequate for other researchers to replicate their analysis.”
Data collection and sharing for the project was funded by the ADNI, the National Institutes of Health, and the US Department of Defense. Dr Sohn, Dr Larvie, and Dr Curfman have disclosed no relevant financial relations. Coauthors’ disclosures or such relationships are listed in the original articles.
Radiology. Published on November 6, 2018. Full text, Editorial
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