F. De Carlo
University of Bari
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Publication
Featured researches published by F. De Carlo.
IEEE Symposium Conference Record Nuclear Science 2004. | 2004
F. Fauci; S. Bagnasco; R. Bellotti; D. Cascio; S.C. Cheran; F. De Carlo; G. De Nunzio; M.E. Fantacci; G. Forni; A. Lauria; Ernesto Lopez Torres; R. Magro; Giovanni Luca Christian Masala; P. Oliva; Maurizio Quarta; G. Raso; Alessandra Retico; S. Tangaro
The mammography is the most effective procedure for an early diagnosis of the breast cancer. In this paper, an algorithm for detecting massive lesions in mammographic images will be presented. The database consists of 3762 digital images acquired in several hospitals belonging to the MAGIC-5 collaboration. A reduction of the surface under investigation is achieved, without loss of meaningful information, through segmentation of the whole image, by means of a ROI Hunter algorithm. In the following classification step, feature extraction plays a fundamental role: some features give geometrical information, other ones provide shape parameters. Once the features are computed for each ROI, they are used as inputs to a supervised neural network with momentum. The output neuron provides the probability that the ROI is pathological or not. Results are provided in terms of ROC and FROC curves; the area under the ROC curve was found to be Az=(85.6plusmn0.8)%. This software is included in the CAD station actually working in the hospitals belonging to the MAGIC-5 Collaboration
Medical Physics | 2006
Roberto Bellotti; F. De Carlo; S. Tangaro; Gianfranco Gargano; G. Maggipinto; M. Castellano; R. Massafra; D. Cascio; F. Fauci; R. Magro; G. Raso; A. Lauria; G. Forni; S. Bagnasco; P. Cerello; Zanon E; S. C. Cheran; E. Lopez Torres; U. Bottigli; Giovanni Luca Christian Masala; P. Oliva; A. Retico; Maria Evelina Fantacci; Rosella Cataldo; I. De Mitri; G. De Nunzio
Mass localization plays a crucial role in computer-aided detection (CAD) systems for the classification of suspicious regions in mammograms. In this article we present a completely automated classification system for the detection of masses in digitized mammographic images. The tool system we discuss consists in three processing levels: (a) Image segmentation for the localization of regions of interest (ROIs). This step relies on an iterative dynamical threshold algorithm able to select iso-intensity closed contours around gray level maxima of the mammogram. (b) ROI characterization by means of textural features computed from the gray tone spatial dependence matrix (GTSDM), containing second-order spatial statistics information on the pixel gray level intensity. As the images under study were recorded in different centers and with different machine settings, eight GTSDM features were selected so as to be invariant under monotonic transformation. In this way, the images do not need to be normalized, as the adopted features depend on the texture only, rather than on the gray tone levels, too. (c) ROI classification by means of a neural network, with supervision provided by the radiologists diagnosis. The CAD system was evaluated on a large database of 3369 mammographic images [2307 negative, 1062 pathological (or positive), containing at least one confirmed mass, as diagnosed by an expert radiologist]. To assess the performance of the system, receiver operating characteristic (ROC) and free-response ROC analysis were employed. The area under the ROC curve was found to be Az = 0.783 +/- 0.008 for the ROI-based classification. When evaluating the accuracy of the CAD against the radiologist-drawn boundaries, 4.23 false positives per image are found at 80% of mass sensitivity.
Medical Physics | 2007
Roberto Bellotti; F. De Carlo; Gianfranco Gargano; S. Tangaro; D. Cascio; Ezio Catanzariti; P. Cerello; S.C. Cheran; Pasquale Delogu; I. De Mitri; C. Fulcheri; D. Grosso; Alessandra Retico; Sandro Squarcia; E. Tommasi; Bruno Golosio
A computer-aided detection (CAD) system for the selection of lung nodules in computer tomography (CT) images is presented. The system is based on region growing (RG) algorithms and a new active contour model (ACM), implementing a local convex hull, able to draw the correct contour of the lung parenchyma and to include the pleural nodules. The CAD consists of three steps: (1) the lung parenchymal volume is segmented by means of a RG algorithm; the pleural nodules are included through the new ACM technique; (2) a RG algorithm is iteratively applied to the previously segmented volume in order to detect the candidate nodules; (3) a double-threshold cut and a neural network are applied to reduce the false positives (FPs). After having set the parameters on a clinical CT, the system works on whole scans, without the need for any manual selection. The CT database was recorded at the Pisa center of the ITALUNG-CT trial, the first Italian randomized controlled trial for the screening of the lung cancer. The detection rate of the system is 88.5% with 6.6 FPs/CT on 15 CT scans (about 4700 sectional images) with 26 nodules: 15 internal and 11 pleural. A reduction to 2.47 FPs/CT is achieved at 80% efficiency.
ieee nuclear science symposium | 2006
D. Cascio; F. Fauci; R. Magro; G. Raso; R. Bellotti; F. De Carlo; Sonia Tangaro; G. De Nunzio; G. Forni; A. Lauria; M.E. Fantacci; A. Retico; G.L. Masala; P. Oliva; S. Bagnasco; S.C. Cheran; E.L. Torres
The mammography is the most effective procedure for an early diagnosis of the breast cancer. In this paper, an algorithm for detecting masses in mammographic images will be presented. The database consists of 3762 digital images acquired in several hospitals belonging to the MAGIC-5 collaboration (Medical Applications on a Grid Infrastructure Connection). A reduction of the whole images area under investigation is achieved through a segmentation process, by means of a ROI Hunter algorithm, without loss of meaningful information. In the following classification step, feature extraction plays a fundamental role: some features give geometrical information, other ones provide shape parameters. Once the features are computed for each ROI, they are used as inputs to a supervised neural network with momentum. The output neuron provides the probability that the ROI is pathological or not. Results are provided in terms of ROC and FROC curves: the area under the ROC curve was found to be AZ=0.862plusmn0.007, and we get a 2.8 FP/Image at a sensitivity of 82%. This software is included in the CAD station actually working in the hospitals belonging to the MAGIC-5 Collaboration
Physica Medica | 2005
F. Fauci; G. De Nunzio; R. Magro; G. Forni; A. Lauria; S. Bagnasco; P. Cerello; S. C. Cheran; E. Lopez Torres; Roberto Bellotti; F. De Carlo; Gianfranco Gargano; S. Tangaro; I. De Mitri; Raso
A new algorithm for massive lesion detection in mammography is presented. The algorithm consists in three main steps: 1) reduction of the dimension of the image to be processed through the identification of regions of interest (roi) as candidates for massive lesions; 2) characterization of the RoI by means of suitable feature extraction; 3) pattern classification through supervised neural networks. Suspect regions are detected by searching for local maxima of the pixel grey level intensity. A ring of increasing radius, centered on a maximum, is considered until the mean intensity in the ring decreases to a defined fraction of the maximum. The ROIS thus obtained are described by average, variance, skewness and kurtosis of the intensity distributions at different fractions of the radius. A neural network approach is adopted to classify suspect pathological and healthy pattern. The software has been designed in the framework of the INFN (Istituto Nazionale Fisica Nucleare) research project GPCALMA (Grid Platform for Calma) which recruits physicists and radiologists from different Italian Research Institutions and hospitals to develop software for breast cancer detection.
nuclear science symposium and medical imaging conference | 2004
R. Bellotti; S. Bagnasco; U. Bottigli; Marcello Castellano; Rosella Cataldo; Ezio Catanzariti; P. Cerello; Sc Cheran; F. De Carlo; P. Delogu; I. De Mitri; G. De Nunzio; Me Fantacci; F. Fauci; G. Forni; G. Gargano; Bruno Golosio; Pl Indovina; A. Lauria; El Torres; R. Magro; D. Martello; Giovanni Luca Christian Masala; R. Massafra; P. Oliva; Rosa Palmiero; Ap Martinez; R Prevete; L. Ramello; G. Raso
The MAGIC-5 Project aims at developing computer aided detection (CAD) software for medical applications on distributed databases by means of a GRID infrastructure connection. The use of automatic systems for analyzing medical images is of paramount importance in the screening programs, due to the huge amount of data to check. Examples are: mammographies for breast cancer detection, computed-tomography (CT) images for lung cancer analysis, and the positron emission tomography (PET) imaging for the early diagnosis of the Alzheimer disease. The need for acquiring and analyzing data stored in different locations requires a GRID approach of distributed computing system and associated data management. The GRID technologies allow remote image analysis and interactive online diagnosis, with a relevant reduction of the delays actually associated to the screening programs. From this point of view, the MAGIC-5 Collaboration can be seen as a group of distributed users sharing their resources for implementing different virtual organizations (VO), each one aiming at developing screening programs, tele-training, tele-diagnosis and epidemiologic studies for a particular pathology.
Radiologia Medica | 2008
Sabina Tangaro; Roberto Bellotti; F. De Carlo; Gianfranco Gargano; E. Lattanzio; P. Monno; R. Massafra; Pasquale Delogu; Maria Evelina Fantacci; A. Retico; Massimo Bazzocchi; S. Bagnasco; P. Cerello; S.C. Cheran; E. Lopez Torres; Zanon E; A. Lauria; Antonio Sodano; D. Cascio; F. Fauci; R. Magro; G. Raso; R. Ienzi; U. Bottigli; Giovanni Luca Christian Masala; P. Oliva; G. Meloni; A. P. Caricato; R. Cataldo
The implementation of a database of digitised mammograms is discussed. The digitised images were collected beginning in 1999 by a community of physicists in collaboration with radiologists in several Italian hospitals as a first step in developing and implementing a computer-aided detection (CAD) system. All 3,369 mammograms were collected from 967 patients and classified according to lesion type and morphology, breast tissue and pathology type. A dedicated graphical user interface was developed to visualise and process mammograms to support the medical diagnosis directly on a high-resolution screen. The database has been the starting point for developing other medical imaging applications, such as a breast CAD, currently being upgraded and optimised for use in a distributed environment with grid services, in the framework of the Instituto Nazionale di Fisicia Nucleare (INFN)-funded Medical Applications on a Grid Infrastructure Connection (MAGIC)-5 project.RiassuntoIn qesto lavoro viene discussa l’implementazione di un database immagini mammografiche digitalizzate. Le immagini sono state raccolte dal 1999 da un gruppo di fisici in collaborazione con radiology di alcuni ospedali italiani, come primo passo dello sviluppo e implementazione di un sistema di Computer Aided Detection (CAD). I 3369 mammogrammi appartengono a 967 pazienti e sono classificati secondo I tipi e la morfologia delle lesioni, il tessuto mammario e i tipi di patologie. Una interfaccia grafica opportunamente progettata è stata sviluppata per la visualizzazione e l’elaborazione delle mammografie digitalizzate al fine di runpoter supportare direttamente una diagnosi medica su monitor ad alta risoluzione. Il database ha rappresentato il punto di partenza per lo sviluppo di altre applicazioni di imaging medicale come il CAD mammografico costantemente ottimizzato e aggiornato con l’uso di un ambiente distribuito che dispone di servizi GRID, nel framework del progetto MAGIC-5, finanziato dell’INFN.
international conference of the ieee engineering in medicine and biology society | 2007
R. Bellotti; F. De Carlo; M. de Tommaso; M. Lucente
Spontaneous EEG patterns are studied to detect migraine patients both during the attack and in headache-free periods. The EEG signals are analyzed through the wavelets and both scale-dependent and scale-independent features are computed to characterize the patterns. The classification is carried out by a supervised neural network. The efficiency of the method is evaluated through the receiver operating characteristic (ROC) analysis and the Wilcoxon-Mann-Whitney (WMW) test. Although a high discrimination is observed with one single neural output, a complete separation among MwA patients and healthy subjects is obtained when a scatter plot is drawn in the plane of two suitable neural outputs.
Filtration & Separation | 2004
S.C. Cheran; Rosella Cataldo; P. Cerello; F. De Carlo; F. Fauci; G. Fomi; Bruno Golosio; A. Lauria; E. Lopez Torres; I. De Mitri; Giovanni Luca Christian Masala; G. Raso; Alessandra Retico; A. Tata
In the present paper we discuss a new approach for the detection of microcalcification clusters, based on neural networks and developed as part of the MAGIC-5 project, an INFN-funded program which aims at the development and implementation of CAD algorithms in a GRID-based distributed environment. The proposed approach has as its roots the desire to maximize the rejection of background during the analytical pre-processing stage, in order to train and test the neural network with as clean as possible a sample and therefore maximize its performance. The algorithm is composed of three modules: the image pre-processing, the feature extraction component and the Backpropagation Neural Network module. The First module comprises the use of several algorithms: H-Dome Transformation, Masking, Binarisation of grayscale images, Connected Components Labeling; for the classification, initially 27 features are extracted from the output image, features that are statistically analyzed and reduced to 17, which are used as input to the Backpropagation Neural Network. The algorithm was trained (tested) on 139 (139) images respectively, containing 149 (152) true clusters and 146 (415) false
IEEE Transactions on Nuclear Science | 2004
R. Bellotti; Marcello Castellano; F. De Carlo
A chaotic map algorithm is proposed to study similarity-based knowledge of temporal patterns. Several information sources can be regarded as time series, both in scientific and technological fields such as nuclear physics, computer network, biomedical signals, and many others. The application of an automatic knowledge discovery mechanism has a strong impact on system science and engineering. The advantage of the proposed algorithm is due to its capability to extract meaningful features from complex data sets, as temporal patterns, without teacher. A case study has been carried on biomedical signals, such as electroencephalographic records, to recognize patterns affected by the Huntingtons disease, one of the most dangerous pathology of the central nervous system. The chaotic map algorithm succeeds in distinguishing between pathological and normal patterns, with high values of both sensitivity and specificity.