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Dive into the research topics where Christian D. Klose is active.

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Featured researches published by Christian D. Klose.


Journal of Biomedical Optics | 2008

Multiparameter classifications of optical tomographic images.

Christian D. Klose; Alexander D. Klose; Uwe Netz; Juergen Dr Beuthan; Andreas H. Hielscher

This research study explores the combined use of more than one parameter derived from optical tomographic images to increase diagnostic accuracy which is measured in terms of sensitivity and specificity. Parameters considered include, for example, smallest or largest absorption or scattering coefficients or the ratios thereof in an image region of interest. These parameters have been used individually in a previous study to determine if a finger joint is affected or not affected by rheumatoid arthritis. To combine these parameters in the analysis we employ here a vector quantization based classification method called Self-Organizing Mapping (SOM). This method allows producing multivariate ROC-curves from which sensitivity and specificities can be determined. We found that some parameter combinations can lead to higher sensitivities whereas others to higher specificities when compared to singleparameter classifications employed in previous studies. The best diagnostic accuracy, in terms of highest Youden index, was achieved by combining three absorption parameters [maximum(micro a), minimum(micro a), and the ratio of minimum(micro a) and maximum(micro a)], which result in a sensitivity of 0.78, a specificity of 0.76, a Youden index of 0.54, and an area under the curve (AUC) of 0.72. These values are higher than for previously reported single parameter classifications with a best sensitivity and specificity of 0.71, a Youden index of 0.41, and an AUC of 0.66.


Journal of Biomedical Optics | 2010

Computer-aided interpretation approach for optical tomographic images

Christian D. Klose; Alexander D. Klose; Uwe Netz; Alexander K. Scheel; Jürgen Beuthan; Andreas H. Hielscher

A computer-aided interpretation approach is proposed to detect rheumatic arthritis (RA) in human finger joints using optical tomographic images. The image interpretation method employs a classification algorithm that makes use of a so-called self-organizing mapping scheme to classify fingers as either affected or unaffected by RA. Unlike in previous studies, this allows for combining multiple image features, such as minimum and maximum values of the absorption coefficient for identifying affected and not affected joints. Classification performances obtained by the proposed method were evaluated in terms of sensitivity, specificity, Youden index, and mutual information. Different methods (i.e., clinical diagnostics, ultrasound imaging, magnet resonance imaging, and inspection of optical tomographic images), were used to produce ground truth benchmarks to determine the performance of image interpretations. Using data from 100 finger joints, findings suggest that some parameter combinations lead to higher sensitivities, while others to higher specificities when compared to single parameter classifications employed in previous studies. Maximum performances are reached when combining the minimum/maximum ratio of the absorption coefficient and image variance. In this case, sensitivities and specificities over 0.9 can be achieved. These values are much higher than values obtained when only single parameter classifications were used, where sensitivities and specificities remained well below 0.8.


Advanced Biomedical and Clinical Diagnostic Systems VII | 2009

Computer-aided classification of rheumatoid arthritis in finger joints using frequency domain optical tomography

Christian D. Klose; H. K. Kim; Uwe Netz; Sabine Blaschke; Pa Zwaka; Gerhard A. Mueller; Jürgen Beuthan; Andreas H. Hielscher

Novel methods that can help in the diagnosis and monitoring of joint disease are essential for efficient use of novel arthritis therapies that are currently emerging. Building on previous studies that involved continuous wave imaging systems we present here first clinical data obtained with a new frequency-domain imaging system. Three-dimensional tomographic data sets of absorption and scattering coefficients were generated for 107 fingers. The data were analyzed using ANOVA, MANOVA, Discriminant Analysis DA, and a machine-learning algorithm that is based on self-organizing mapping (SOM) for clustering data in 2-dimensional parameter spaces. Overall we found that the SOM algorithm outperforms the more traditional analysis methods in terms of correctly classifying finger joints. Using SOM, healthy and affected joints can now be separated with a sensitivity of 0.97 and specificity of 0.91. Furthermore, preliminary results suggest that if a combination of multiple image properties is used, statistical significant differences can be found between RA-affected finger joints that show different clinical features (e.g. effusion, synovitis or erosion).


Proceedings of SPIE | 2008

Multi-Parameter Optical Image Interpretations Based on Self-Organizing Mapping

Christian D. Klose; A. K. Klose; Uwe Netz; Alexander K. Scheel; Jürgen Beuthan; Andreas H. Hielscher

We found that using more than one parameter derived from optical tomographic images can lead to better image classification results compared to cases when only one parameter is used.. In particular we present a multi-parameter classification approach, called self-organizing mapping (SOM), for detecting synovitis in arthritic finger joints based on sagittal laser optical tomography (SLOT). This imaging modality can be used to determine various physical parameters such as minimal absorption and scattering coefficients in an image of the proximal interphalengeal joint. Results were compared to different gold standards: magnet resonance imaging, ultra-sonography and clinical evaluation. When compared to classifications based on single-parameters, e.g., absorption minimum only, the study reveals that multi-parameter classifications lead to higher classification sensitivities and specificities and statistical significances with p-values <5 per cent. Finally, the data suggest that image analyses are more reliable and avoid ambiguous interpretations when using more than one parameter.


IEEE Transactions on Biomedical Engineering | 2010

Comparison of Classification Methods for Detection of Rheumatoid Arthritis with Optical Tomography

Ludguier D. Montejo; Julio D. Montejo; Hyun Keol Kim; Uwe Netz; Christian D. Klose; Sabine Blaschke; Pa Zwaka; Gerhard A. Müller; Jürgen Beuthan; Andreas H. Hielscher

Using optical tomographic data from fingers affected by RA we compare the performance of 3 different classification methods. Linear discriminant and quadratic discriminant analysis methods yield high sensitivities while support-vector machine-based methods yield high specificities.


northeast bioengineering conference | 2010

Diagnosis of rheumatoid arthritis with optical tomography: Comparison of classification methods

Ludguier D. Montejo; Julio D. Montejo; Hyun Keol Kim; Uwe Netz; Christian D. Klose; Sabine Blaschke; Pa Zwaka; Gerhard A. Müller; Jürgen Beuthan; Andreas H. Hielscher

Linear discriminant analysis (LDA) and support vector machines (SVM) are used to classify reconstructed absorption coefficient distributions of the proximal interphalangeal joints as affected or not affected by rheumatoid arthritis. The performance of each classification method is quantified using the leave-n-out method. LDA is shown to yield high sensitivities, while SVM yields high specificities.


Mine Water and The Environment | 2007

Mine Water Discharge and Flooding: A Cause of Severe Earthquakes

Christian D. Klose


Natural Hazards | 2007

Health risk analysis of volcanic SO 2 hazard on Vulcano Island (Italy)

Christian D. Klose


Progress in biomedical optics and imaging | 2009

Optical tomographic detection of rheumatoid arthritis with computer-aided classification schemes

Christian D. Klose; Alexander D. Klose; Uwe Netz; Jürgen Beuthan; Andreas H. Hielscher


Archive | 2010

Evidence for Surface Loading as Trigger Mechanism of the 2008 Wenchuan Earthquake

Christian D. Klose

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Pa Zwaka

University of Göttingen

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