291 research outputs found

    Computer-aided detection and diagnosis of breast cancer in 2D and 3D medical imaging through multifractal analysis

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    This Thesis describes the research work performed in the scope of a doctoral research program and presents its conclusions and contributions. The research activities were carried on in the industry with Siemens S.A. Healthcare Sector, in integration with a research team. Siemens S.A. Healthcare Sector is one of the world biggest suppliers of products, services and complete solutions in the medical sector. The company offers a wide selection of diagnostic and therapeutic equipment and information systems. Siemens products for medical imaging and in vivo diagnostics include: ultrasound, computer tomography, mammography, digital breast tomosynthesis, magnetic resonance, equipment to angiography and coronary angiography, nuclear imaging, and many others. Siemens has a vast experience in Healthcare and at the beginning of this project it was strategically interested in solutions to improve the detection of Breast Cancer, to increase its competitiveness in the sector. The company owns several patents related with self-similarity analysis, which formed the background of this Thesis. Furthermore, Siemens intended to explore commercially the computer- aided automatic detection and diagnosis eld for portfolio integration. Therefore, with the high knowledge acquired by University of Beira Interior in this area together with this Thesis, will allow Siemens to apply the most recent scienti c progress in the detection of the breast cancer, and it is foreseeable that together we can develop a new technology with high potential. The project resulted in the submission of two invention disclosures for evaluation in Siemens A.G., two articles published in peer-reviewed journals indexed in ISI Science Citation Index, two other articles submitted in peer-reviewed journals, and several international conference papers. This work on computer-aided-diagnosis in breast led to innovative software and novel processes of research and development, for which the project received the Siemens Innovation Award in 2012. It was very rewarding to carry on such technological and innovative project in a socially sensitive area as Breast Cancer.No cancro da mama a deteção precoce e o diagnóstico correto são de extrema importância na prescrição terapêutica e caz e e ciente, que potencie o aumento da taxa de sobrevivência à doença. A teoria multifractal foi inicialmente introduzida no contexto da análise de sinal e a sua utilidade foi demonstrada na descrição de comportamentos siológicos de bio-sinais e até na deteção e predição de patologias. Nesta Tese, três métodos multifractais foram estendidos para imagens bi-dimensionais (2D) e comparados na deteção de microcalci cações em mamogramas. Um destes métodos foi também adaptado para a classi cação de massas da mama, em cortes transversais 2D obtidos por ressonância magnética (RM) de mama, em grupos de massas provavelmente benignas e com suspeição de malignidade. Um novo método de análise multifractal usando a lacunaridade tri-dimensional (3D) foi proposto para classi cação de massas da mama em imagens volumétricas 3D de RM de mama. A análise multifractal revelou diferenças na complexidade subjacente às localizações das microcalci cações em relação aos tecidos normais, permitindo uma boa exatidão da sua deteção em mamogramas. Adicionalmente, foram extraídas por análise multifractal características dos tecidos que permitiram identi car os casos tipicamente recomendados para biópsia em imagens 2D de RM de mama. A análise multifractal 3D foi e caz na classi cação de lesões mamárias benignas e malignas em imagens 3D de RM de mama. Este método foi mais exato para esta classi cação do que o método 2D ou o método padrão de análise de contraste cinético tumoral. Em conclusão, a análise multifractal fornece informação útil para deteção auxiliada por computador em mamogra a e diagnóstico auxiliado por computador em imagens 2D e 3D de RM de mama, tendo o potencial de complementar a interpretação dos radiologistas

    Breast cancer diagnosis: a survey of pre-processing, segmentation, feature extraction and classification

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    Machine learning methods have been an interesting method in the field of medical for many years, and they have achieved successful results in various fields of medical science. This paper examines the effects of using machine learning algorithms in the diagnosis and classification of breast cancer from mammography imaging data. Cancer diagnosis is the identification of images as cancer or non-cancer, and this involves image preprocessing, feature extraction, classification, and performance analysis. This article studied 93 different references mentioned in the previous years in the field of processing and tries to find an effective way to diagnose and classify breast cancer. Based on the results of this research, it can be concluded that most of today’s successful methods focus on the use of deep learning methods. Finding a new method requires an overview of existing methods in the field of deep learning methods in order to make a comparison and case study

    Deep-Learning-Based Computer- Aided Systems for Breast Cancer Imaging: A Critical Review

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    [EN] This paper provides a critical review of the literature on deep learning applications in breast tumor diagnosis using ultrasound and mammography images. It also summarizes recent advances in computer-aided diagnosis/detection (CAD) systems, which make use of new deep learning methods to automatically recognize breast images and improve the accuracy of diagnoses made by radiologists. This review is based upon published literature in the past decade (January 2010-January 2020), where we obtained around 250 research articles, and after an eligibility process, 59 articles were presented in more detail. The main findings in the classification process revealed that new DL-CAD methods are useful and effective screening tools for breast cancer, thus reducing the need for manual feature extraction. The breast tumor research community can utilize this survey as a basis for their current and future studies.This project has been co-financed by the Spanish Government Grant PID2019-107790RB-C22, "Software development for a continuous PET crystal systems applied to breast cancer".Jiménez-Gaona, Y.; Rodríguez Álvarez, MJ.; Lakshminarayanan, V. (2020). Deep-Learning-Based Computer- Aided Systems for Breast Cancer Imaging: A Critical Review. Applied Sciences. 10(22):1-29. https://doi.org/10.3390/app10228298S1291022Jemal, A., Bray, F., Center, M. M., Ferlay, J., Ward, E., & Forman, D. (2011). Global cancer statistics. CA: A Cancer Journal for Clinicians, 61(2), 69-90. doi:10.3322/caac.20107Gao, F., Chia, K.-S., Ng, F.-C., Ng, E.-H., & Machin, D. (2002). Interval cancers following breast cancer screening in Singaporean women. International Journal of Cancer, 101(5), 475-479. doi:10.1002/ijc.10636Munir, K., Elahi, H., Ayub, A., Frezza, F., & Rizzi, A. (2019). 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    Advanced Computational Methods for Oncological Image Analysis

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    [Cancer is the second most common cause of death worldwide and encompasses highly variable clinical and biological scenarios. Some of the current clinical challenges are (i) early diagnosis of the disease and (ii) precision medicine, which allows for treatments targeted to specific clinical cases. The ultimate goal is to optimize the clinical workflow by combining accurate diagnosis with the most suitable therapies. Toward this, large-scale machine learning research can define associations among clinical, imaging, and multi-omics studies, making it possible to provide reliable diagnostic and prognostic biomarkers for precision oncology. Such reliable computer-assisted methods (i.e., artificial intelligence) together with clinicians’ unique knowledge can be used to properly handle typical issues in evaluation/quantification procedures (i.e., operator dependence and time-consuming tasks). These technical advances can significantly improve result repeatability in disease diagnosis and guide toward appropriate cancer care. Indeed, the need to apply machine learning and computational intelligence techniques has steadily increased to effectively perform image processing operations—such as segmentation, co-registration, classification, and dimensionality reduction—and multi-omics data integration.

    Computer Aided Detection of Microcalcifications Utilizing Texture Analysis

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    A comparative study of texture measures for the classification of breast tissue is presented. The texture features investigated include Angular Second Moments, Power Spectrum Analysis and a novel feature, Laws Energy Ratios. The texture study was accomplished as part of the development of a Model Based Vision (MBV) system for the automatic detection of microcalcifications. An overview of the Microcalcification Detection System is presented, which applies image differencing techniques, feature selection methods, and neural networks for locating microcalcification clusters in mammograms. The Power Spectrum Analysis feature set had the best overall performance with an 83% Probability of Detection and an average False ROl Rate of 2.17 ROIs per image over 53 mammograms. A combination of Laws Energy Ratio and Power Spectrum Analysis features selected using Ruck Saliency metrics achieved an increased Probability of Detection of 85% with an average 4 false ROIs per image

    Breast Cancer : automatic detection and risk analysis through machine learning algorithms, using mammograms

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    Tese de Mestrado Integrado, Engenharia Biomédica e Biofísica (Engenharia Clínica e Instrumentação Médica), 2021, Universidade de Lisboa, Faculdade de CiênciasCom 2.3 milhões de casos diagnosticados em todo o Mundo, durante o ano de 2020, o cancro da mama tornou-se aquele com maior incidência, nesse mesmo ano, considerando ambos os sexos. Anualmente, em Portugal, são diagnosticados aproximadamente sete mil (7000) novos casos de cancro da mama, com mil oitocentas (1800) mulheres a morrerem, todos os anos, devido a esta doença - indicando uma taxa de mortalidade de aproximadamente 5 mulheres por dia. A maior parte dos diagnósticos de cancro da mama ocorrem ao nível de programas de rastreio, que utilizam mamografia. Esta técnica de imagem apresenta alguns problemas: o facto de ser uma imagem a duas dimensões leva a que haja sobreposição de tecidos, o que pode mascarar a presença de tumores; e a fraca sensibilidade a mamas mais densas, sendo estas caraterísticas de mulheres com risco de cancro da mama mais elevado. Como estes dois problemas dificultam a leitura das mamografias, grande parte deste trabalhou focou-se na verificação do desempenho de métodos computacionais na tarefa de classificar mamografias em duas classes: cancro e não-cancro. No que diz respeito à classe “não cancro” (N = 159), esta foi constituída por mamografias saudáveis (N=84), e por mamografias que continham lesões benignas (N=75). Já a classe “cancro” continha apenas mamografias com lesões malignas (N = 73). A discriminação entre estas duas classes foi feita com recurso a algoritmos de aprendizagem automática. Múltiplos classificadores foram otimizados e treinados (Ntreino=162, Nteste = 70), recorrendo a um conjunto de características previamente selecionado, que descreve a textura de toda a mamografia, em vez de apenas uma única Região de Interesse. Estas características de textura baseiam-se na procura de padrões: sequências de pixéis com a mesma intensidade, ou pares específicos de pixéis. O classificador que apresentou uma performance mais elevada foi um dos Support Vector Machine (SVM) treinados – AUC= 0.875, o que indica um desempenho entre o bom e o excelente. A Percent Mammographic Density (%PD) é um importante fator de risco no que diz respeito ao desenvolvimento da doença, pelo que foi estudado se a sua adição ao set de features selecionado resultaria numa melhor performance dos classificadores. O classificador, treinado e otimizado utilizando as features de textura e os cálculos de %PD, com maior capacidade discriminativa foi um Linear Discriminant Analysis (LDA) – AUC = 0.875. Uma vez que a performance é igual à obtida com o classificador que utiliza apenas features de textura, conclui-se que a %PD parece não contribuir com informação relevante. Tal pode ocorrer porque as próprias características de textura já têm informação sobre a densidade da mama. De forma a estudar-se de que modo o desempenho destes métodos computacionais pode ser afetado por piores condições de aquisição de imagem, foi simulado ruído gaussiano, e adicionado ao set de imagens utilizado para testagem. Este ruído, adicionado a cada imagem com quatro magnitudes diferentes, resultou numa AUC de 0.765 para o valor mais baixo de ruído, e numa AUC de 0.5 para o valor de ruído mais elevado. Tais resultados indicam que, para níveis de ruído mais baixo, o classificador consegue, ainda assim, manter uma performance satisfatória – o que deixa de se verificar para valores mais elevados de ruído. Estudou-se, também, se a aplicação de técnicas de filtragem – com um filtro mediana – poderia ajudar a recuperar informação perdida aquando da adição de ruído. A aplicação do filtro a todas as imagens ruidosas resultou numa AUC de 0.754 para o valor mais elevado de ruído, atingindo assim um desempenho similar ao set de imagens menos ruidosas, antes do processo de filtragem (AUC=0.765). Este resultados parecem indicar que, na presença de más condições de aquisição, a aplicação de um filtro mediana pode ajudar a recuperar informação, conduzindo assim a um melhor desempenho dos métodos computacionais. No entanto, esta mesma conclusão parece não se verificar para valores de ruído mais baixo onde a AUC após filtragem acaba por ser mais reduzida. Tal resultado poderá indicar que, em situações onde o nível de ruído é mais baixo, a técnica de filtragem não só remove o ruído, como acaba também por, ela própria, remover informação ao nível da textura da imagem. De modo a verificar se mamas com diferentes densidades afetavam a performance do classificador, foram criados três sets de teste diferentes, cada um deles contendo imagens de mamas com a mesma densidade (1, 2, e 3). Os resultados obtidos indicam-nos que um aumento na densidade das mamas analisadas não resulta, necessariamente, numa diminuição da capacidade em discriminar as classes definidas (AUC = 0.864, AUC = 0.927, AUC= 0.905; para as classes 1, 2, e 3 respetivamente). A utilização da imagem integral para analisar de textura, e a utilização de imagens de datasets diferentes (com dimensões de imagem diferentes), poderiam introduzir um viés na classificação, especialmente no que diz respeito às diferentes áreas da mama. Para verificar isso mesmo, utilizando o coeficiente de correlação de Pearson, ρ = 0.3, verificou-se que a área da mama (e a percentagem de ocupação) tem uma fraca correlação com a classificação dada a cada imagem. A construção do classificador, para além de servir de base a todos os testes apresentados, serviu também o propósito de criar uma interface interativa, passível de ser utilizada como ficheiro executável, sem necessidade de instalação de nenhum software. Esta aplicação permite que o utilizador carregue imagens de mamografia, exclua background desnecessário para a análise da imagem, extraia features, teste o classificador construído e dê como output, no ecrã, a classe correspondente à imagem carregada. A análise de risco de desenvolvimento da doença foi conseguida através da análise visual da variação dos valores das features de textura ao longo dos anos para um pequeno set (N=11) de mulheres. Esta mesma análise permitiu descortinar aquilo que parece ser uma tendência apresentada apenas por mulheres doentes, na mamografia imediatamente anterior ao diagnóstico da doença. Todos os resultados obtidos são descritos profundamente ao longo deste documento, onde se faz, também, uma referência pormenorizada a todos os métodos utilizados para os obter. O resultado da classificação feita apenas com as features de textura encontra-se dentro dos valores referenciados no estado-da-arte, indicando que o uso de features de textura, por si só, demonstrou ser profícuo. Para além disso, tal resultado serve também de indicação que o recurso a toda a imagem de mamografia, sem o trabalho árduo de definição de uma Região de Interesse, poderá ser utilizado com relativa segurança. Os resultados provenientes da análise do efeito da densidade e da área da mama, dão também confiança no uso do classificador. A interface interativa que resultou desta primeira fase de trabalho tem, potencialmente, um diferenciado conjunto de aplicações: no campo médico, poderá servir de auxiliar de diagnóstico ao médico; já no campo da análise computacional, poderá servir para a definição da ground truth de potenciais datasets que não tenham legendas definidas. No que diz respeito à análise de risco, a utilização de um dataset de dimensões reduzidas permitiu, ainda assim, compreender que existem tendências nas variações das features ao longo dos anos, que são especificas de mulheres que desenvolveram a doença. Os resultados obtidos servem, então, de indicação que a continuação desta linha de trabalho, procurando avaliar/predizer o risco, deverá ser seguida, com recurso não só a datasets mais completos, como também a métodos computacionais de aprendizagem automática.Two million and three hundred thousand Breast Cancer (BC) cases were diagnosed in 2020, making it the type of cancer with the highest incidence that year, considering both sexes. Breast Cancer diagnosis usually occurs during screening programs using mammography, which has some downsides: the masking effect due to its 2-D nature, and its poor sensitivity concerning dense breasts. Since these issues result in difficulties reading mammograms, the main part of this work aimed to verify how a computer vision method would perform in classifying mammograms into two classes: cancer and non-cancer. The ‘non-cancer group’ (N=159) was composed by images with healthy tissue (N=84) and images with benign lesions (N=75), while the cancer group (N=73) contained malignant lesions. To achieve this, multiple classifiers were optimized and trained (Ntrain = 162, Ntest = 70) with a previously selected ideal sub-set of features that describe the texture of the entire image, instead of just one small Region of Interest (ROI). The classifier with the best performance was Support Vector Machine (SVM), (AUC = 0.875), which indicates a good-to-excellent capability discriminating the two defined groups. To assess if Percent Mammographic Density (%PD), an important risk factor, added important information, a new classifier was optimized and trained using the selected sub-set of texture features plus the %PD calculation. The classifier with the best performance was a Linear Discriminant Analysis (LDA), (AUC=0.875), which seems to indicate, once it achieves the same performance as the classifier using only texture features, that there is no relevant information added from %PD calculations. This happens because texture already includes information on breast density. To understand how the classifier would perform in worst image acquisition conditions, gaussian noise was added to the test images (N=70), with four different magnitudes (AUC= 0.765 for the lowest noise value vs. AUC ≈ 0.5 for the highest). A median filter was applied to the noised images towards evaluating if information could be recovered. For the highest noise value, after filtering, the AUC was very close to the one obtained for the lowest noise value before filtering (0.754 vs 0.765), which indicates information recovery. The effect of density in classifier performance was evaluated by constructing three different test sets, each containing images from a density class (1,2,3). It was seen that an increase in density did not necessarily resulted in a decrease in performance, which indicates that the classifier is robust to density variation (AUC = 0.864, AUC= 0.927, AUC= 0.905 ; for class 1, 2, and 3 respectively). Since the entire image is being analyzed, and images come from different datasets, it was verified if breast area was adding bias to classification. Pearson correlation coefficient provided an output of ρ = 0.22, showing that there is a weak correlation between these two variables. Finally, breast cancer risk was assessed by visual texture feature analysis through the years, for a small set of women (N=11). This visual analysis allowed to unveil what seems to be a pattern amongst women who developed the disease, in the mammogram immediately before diagnosis. The details of each phase, as well as the associated final results are deeply described throughout this document. The work done in the first classification task resulted in a state-of-the-art performance, which may serve as foundation for new research in the area, without the laborious work of ROI definition. Besides that, the use of texture features alone proved to be fruitful. Results concerning risk may serve as basis for future work in the area, with larger datasets and the incorporation of Computer Vision methods

    Medical imaging analysis with artificial neural networks

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    Given that neural networks have been widely reported in the research community of medical imaging, we provide a focused literature survey on recent neural network developments in computer-aided diagnosis, medical image segmentation and edge detection towards visual content analysis, and medical image registration for its pre-processing and post-processing, with the aims of increasing awareness of how neural networks can be applied to these areas and to provide a foundation for further research and practical development. Representative techniques and algorithms are explained in detail to provide inspiring examples illustrating: (i) how a known neural network with fixed structure and training procedure could be applied to resolve a medical imaging problem; (ii) how medical images could be analysed, processed, and characterised by neural networks; and (iii) how neural networks could be expanded further to resolve problems relevant to medical imaging. In the concluding section, a highlight of comparisons among many neural network applications is included to provide a global view on computational intelligence with neural networks in medical imaging

    Histopathological image analysis : a review

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    Over the past decade, dramatic increases in computational power and improvement in image analysis algorithms have allowed the development of powerful computer-assisted analytical approaches to radiological data. With the recent advent of whole slide digital scanners, tissue histopathology slides can now be digitized and stored in digital image form. Consequently, digitized tissue histopathology has now become amenable to the application of computerized image analysis and machine learning techniques. Analogous to the role of computer-assisted diagnosis (CAD) algorithms in medical imaging to complement the opinion of a radiologist, CAD algorithms have begun to be developed for disease detection, diagnosis, and prognosis prediction to complement the opinion of the pathologist. In this paper, we review the recent state of the art CAD technology for digitized histopathology. This paper also briefly describes the development and application of novel image analysis technology for a few specific histopathology related problems being pursued in the United States and Europe
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