Konference: 2015 57th ASH Annual Meeting - účast ČR
Kategorie:
Nádorová biologie/imunologie/genetika a buněčná terapie
Téma: 641. CLL: Biology and Pathophysiology, excluding Therapy: Poster
Číslo abstraktu: 2921
Autoři: Elisavet Chatzilari; Panagiotis Baliakas; Aliki Xochelli; Anastasios Maronidis; MD Anna Vardi, MSc.; Dr. Mattias Mattsson; Prof. Karin Larsson; Vassiliki Douka; Michalis Iskas; George Karavalakis; Apostolia Papalexandri; Carsten Utoft Niemann; MD Marco Montillo; Dr. Achilles Anagnostopoulos; Prof. David Graham Oscier; prof. RNDr. Šárka Pospíšilová, Ph.D.; MD Frederic Davi, PhD; Niki Stavroyianni; M.D. Paolo Ghia, Ph.D.; Anastasia Hadzidimitriou; Prof. MD Richard Rosenquist (Brandell), PhD; Dr. Spiros Nikolopoulos; MD Kostas Stamatopoulos; Dr. Yannis (Ioannis) Kompatsiaris
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.
www.hematology.org
www.bloodjournal.org
Datum přednesení příspěvku: 6. 12. 2015