scholarly journals Histopathological Landscape of Molecular Genetics and Clinical Determinants in MDS Patients

2020 ◽  
Author(s):  
Oscar Brück ◽  
Susanna Lallukka-Brück ◽  
Helena Hohtari ◽  
Aleksandr Ianevski ◽  
Freja Ebeling ◽  
...  

AbstractIn myelodysplastic syndrome (MDS), bone marrow (BM) histopathology is visually assessed to identify dysplastic cellular morphology, cellularity, and blast excess. Yet, many morphological findings elude the human eye. Here, we extracted visual features of 236 MDS, 87 MDS/MPN, and 10 control BM biopsies with convolutional neural networks. Unsupervised analysis distinguished underlying correlations between tissue composition, leukocyte metrics, and clinical characteristics. We applied morphological features in elastic net-regularized regression models to predict genetic and cytogenetic aberrations, prognosis, and clinical variables. By parallelizing tile, pixel, and leukocyte-level image analysis, we deconvoluted each model to texture and cellular composition to dissect their pathobiological context. Model-based mutation predictions correlated with variant allele frequency and number of affected genes per pathway, demonstrating the models’ ability to identify relevant visual patterns. In summary, this study highlights the potential of deep histopathology in hematology by unveiling the fundamental association of BM morphology with genetic and clinical determinants.

1981 ◽  
Vol 46 (4) ◽  
pp. 379-387 ◽  
Author(s):  
Jean E. Maki ◽  
John M. Conklin ◽  
Marianne Streff Gustafson ◽  
Brenda K. Humphrey-Whitehead

If visual speech training aids are to be used effectively, it is important to assess whether hearing-impaired speakers can accurately interpret visual patterns and arrive at correct conclusions concerning the accuracy of speech production. In this investigation with the Speech Spectrographic Display (SSD), a pattern interpretation task was given to 10 hearing-impaired adults. Subjects viewed selected SSD patterns from hearing-impaired speakers, evaluated the accuracy of speech production, and identified the SSD visual features that were used in the evaluation. In general, results showed that subjects could use SSD patterns to evaluate speech production. For those pattern interpretation errors that occurred most were related either to phonetic/orthographic confusions or to misconceptions concerning production of speech.


2020 ◽  
pp. 030573562093266
Author(s):  
Matthew E. Sachs ◽  
Antonio Damasio ◽  
Assal Habibi

The experience of sadness is largely unpleasant, but when expressed through music, it can be pleasurable. Previous research has shown that an attraction to sad music is correlated with personality traits like empathy, Absorption, and rumination. However, the intricacies of the relationship between personality, situational factors, and reasons for engaging with sad music have yet to be fully explored. To address this, participants ( N = 431) reported the situations in which they would listen to sad music and their motivations for doing so. Regularized regression models were employed to assess correlations between personality, situational, and motivational factors. Mediation models were used to determine if emotional responses mediated these associations. People who scored higher on Absorption, the Fantasy component of empathy, and rumination reported enjoying sad music. Absorption and Fantasy were associated with liking sad music because of its ability to regulate/enhance positive emotions. Rumination was associated with liking sad music in tense situations because it both strengthens positive and releases negative emotions. Our results further our understanding of reward responses to negative stimuli by highlighting the role of personality and situational factors. Such findings have implications for the development of interventions for mood disorders, in which music could be used as a tool to regulate emotions and re-engage the reward system.


Author(s):  
Kanji Tanaka ◽  
◽  
Yuuto Chokushi ◽  
Masatoshi Ando

We propose a discriminative and compact scene descriptor for single-view place recognition that facilitates long-term visual SLAM in familiar, semi-dynamic, and partially changing environments. In contrast to popular bag-of-words scene descriptors, which rely on a library of vector quantized visual features, our proposed scene descriptor is based on a library of raw image data (such as an available visual experience, images shared by other colleague robots, and publicly available image data on the Web) and directly mine it to find visual phrases (VPs) that discriminatively and compactly explain an input query/database image. Our mining approach is motivated by recent success achieved in the field of common pattern discovery – specifically mining of common visual patterns among scenes – and requires only a single library of raw images that can be acquired at different times or on different days. Experimental results show that, although our scene descriptor is significantly more compact than conventional descriptors, its recognition performance is relatively high.


2017 ◽  
Vol 30 (4) ◽  
pp. 1345-1361 ◽  
Author(s):  
Timothy DelSole ◽  
Arindam Banerjee

Abstract This paper proposes a regularized regression procedure for finding a predictive relation between one variable and a field of other variables. The procedure estimates a linear prediction model under the constraint that the regression coefficients have smooth spatial structure. The smoothness constraint is imposed using a novel approach based on the eigenvectors of the Laplace operator over the domain, which results in a constrained optimization problem equivalent to either ridge regression or least absolute shrinkage and selection operator (LASSO) regression, which can be solved by standard numerical software. In addition, this paper explores an unconventional procedure whereby regression models are estimated from dynamical model output and then verified against observations—the reverse of the traditional order. The methodology is illustrated by constructing statistical prediction models of summer Texas-area temperature based on concurrent Pacific sea surface temperature (SST). None of the regularized regression models have statistically significant skill when estimated from observations. In contrast, when estimated from dynamical model output, the regression models have skill with respect to dynamical model data because of the substantially larger sample size available from dynamical model output. In addition, the regression models estimated from dynamical model data can predict observed anomalies with significant skill, even though no observations were used directly to estimate the regression models. The results indicate that dynamical models had no significant skill because they could not accurately predict the SST itself, not because they could not capture realistic SST teleconnections.


2020 ◽  
Vol 62 (8) ◽  
pp. 1926-1938
Author(s):  
Youssef Hbid ◽  
Khaladi Mohamed ◽  
Charles D.A. Wolfe ◽  
Abdel Douiri

Blood ◽  
2015 ◽  
Vol 126 (23) ◽  
pp. 2921-2921
Author(s):  
Elisavet Chatzilari ◽  
Panagiotis Baliakas ◽  
Aliki Xochelli ◽  
Anastasios Maronidis ◽  
Anna Vardi ◽  
...  

Abstract The remarkable clinical heterogeneity of CLL has prompted several initiatives towards the development of prognostic models aiming to stratify patients into subgroups with distinct outcome. However, despite progress, the resultant prognostic models, mostly based on Cox regression analysis, have not been adopted in everyday clinical practice, mainly due to failure to provide sufficiently accurate predictions on a per patient basis. Here, we approached the issue of prognostication amongst Binet stage A CLL cases following a novel approach, in particular using Adaboost, an ensemble learning algorithm based on decision trees. Adaboost jointly considers all available parameters providing a specific prediction for each patient, unlike Cox regression models which are based on identifying parameters with independent prognostic significance. In addition, Adaboost models are completely automated with minimal time for training and prediction generation. This is in contrast to Cox models which are manually trained and require significantly more time for prediction generation. Both Cox regression and Adaboost models were evaluated regarding their predictive accuracy i.e. the number of patients successfully assigned to their true risk group divided by the total number of patients. For the development of the prognostic models, 5-fold cross-validation was used. The patients were equally subdivided into 5 subgroups. Each time, 4 out of the 5 subgroups were used to train the Cox regression and the Adaboost models while the 5th was kept as the validation cohort, where the models were applied to. The study cohort included 789 Binet A CLL patients with available data regarding gender, age, immunogenetic profile, CD38 expression, Döhner model cytogenetic aberrations and treatment status with a median follow up of 8.5 years (range 0-40.5 years, at least 5 years for untreated cases). Patients were subdivided in 3 groups: (i) high risk (HR): time-to-first-treatment (TTFT) <2 years, n=215 (27%); (ii) intermediate risk (IR): TTFT≥2 years and <5 years, n=151 (20%); and, (iii) low risk (LR): no need for treatment within 5 years from diagnosis, n=422 (53%). Applying Adaboost, the HR, IR and LR groups included 326 (41.5%), 0 (0%) and 463 (58.5%) cases, respectively. On multivariate analysis, unmutated IGHV genes U-CLL, subset #2 assignement and CD38 expression emerged as independently predictive of shorter TTFT; in contrast, adverse prognosis cytogenetic aberrations i.e. del(17p) and del(11q) did not retain significance (p=0.06 and 0.052, respectively), likely due to their strong association with U-CLL. Applying Cox regression models based on the significant independent parameters, patients were classified as follows: (i) HR: unmutated IGHV genes (U-CLL) and/or assignment to stereotyped subset #2 (n=357, 45%); (ii) IR: mutated IGHV genes (M-CLL) and high CD38 expression (CD38+) (n=41, 5%); and, (iii) LR: M-CLL and low CD38 expression (CD38-) (n=397, 50%). Prediction accuracies were 58.2% and 61.1% for the Cox regression and the Adaboost model, respectively (McNemar's test: p<0.0025). Both models often failed to identify patients belonging to the IR group. Further, we gave the same clinico-biological parameters used for the development of the prognostic models to 7 trained hematologists and asked them to assign each patient included in the study to one of the 3 risk groups. Among the trained hematologists, responses varied within the range of 51.2-58.4%, leading to an average prediction accuracy of 54.6%: particularly challenging was the discrimination between the HR vs the IR group. In conclusion, Adaboost outperforms to a small, yet statistically significant, degree the predictive accuracy of both Cox regression and expert judgment, suggesting its potential for clinical testing. However, the predictive accuracy rates of both the Adaboost and Cox regression approach are still unsatisfactory, highlighting that further development is required in order to provide robust personalized predictive modeling, while also suggesting that statistical significance does not automatically translate into clinical utility. This indicates the need for incorporating disease- and host-related parameters not yet evaluated for their prognostic/predictive value in CLL in order to refine risk stratification, thus meaningfully empowering physicians in clinical decision-making. Disclosures Niemann: Janssen: Consultancy; Roche: Consultancy; Gilead: Consultancy; Novartis: Other: Travel grant. Ghia:Janssen Pharmaceuticals: Research Funding.


Sign in / Sign up

Export Citation Format

Share Document