Search or add a thesis

Advanced Search (Beta)
Home > An Efficient Scheme for Lung Nodule Detection

An Efficient Scheme for Lung Nodule Detection

Thesis Info

Access Option

External Link

Author

Shaukat, Furqan

Program

PhD

Institute

University of Engineering and Technology

City

Taxila

Province

Punjab

Country

Pakistan

Thesis Completing Year

2018

Thesis Completion Status

Completed

Subject

Electrical Engineering

Language

English

Link

http://prr.hec.gov.pk/jspui/bitstream/123456789/10767/1/Furqan_Shaukat_2019_Elect_Eng_UET_Taxila_21.03.2019.pdf

Added

2021-02-17 19:49:13

Modified

2024-03-24 20:25:49

ARI ID

1676727698239

Asian Research Index Whatsapp Chanel
Asian Research Index Whatsapp Chanel

Join our Whatsapp Channel to get regular updates.

Similar


Lung cancer has been one of the major threats to human life for decades in both developed and under developed countries with the smallest rate of survival after diagnosis. The survival rate can be increased by early nodule detection. Computer Aided Detection (CAD) can be an important tool for early lung nodule detection and preventing the deaths caused by the lung cancer. In this dissertation, we have proposed a novel technique for lung nodule detection using a hybrid feature set. The proposed method starts with pre-processing, removing any present noise from input images, followed by lung segmentation using optimal thresholding. Then the image is enhanced using multi scale dot enhancement filtering prior to nodule detection and feature extraction. Finally, classification of lung nodules is achieved using Support Vector Machine (SVM) classifier. The feature set consists of intensity, shape (2D and 3D) and texture features, which have been selected to optimize the sensitivity and reduce false positives. In addition to SVM, some other supervised classifiers like K-Nearest-Neighbour (KNN), Decision Tree and Linear Discriminant Analysis (LDA) have also been used for performance comparison. The extracted features have also been compared class-vise to determine the most relevant features for lung nodule detection. The proposed system has been evaluated using 850 scans from Lung Image Database Consortium (LIDC) dataset and k-fold cross validation scheme. The main research work done in this dissertation is summarized in the following section. 1. The proposed method starts with the segmentation of lung volume from pre-processed input CT images. Lung segmentation has a critical importance as it is pre-requisite to the nodule detection. Any in-accurate lung volume segmentation can lead to the low accuracy of whole system. In this dissertation, we propose a fully automated segmentation method for lung volume from CT scan images which consists of series of steps. Initially, the CT image is segmented by using optimal thresholding and the lung volume is obtained using connected component labeling method and other irrelevant information is removed at this stage. The resultant image at this stage contains holes which is filled with the hole filling algorithm e.g. morphological operations. Finally, the lung contour is smoothed by rolling ball algorithm to include any juxta pleural nodules. 2. After lung segmentation, image enhancement is done to detect the low-density nodules. Image enhancement plays an important role in detection of these nodules by enhancing them and reducing false positives by weakening the other structures in lung region. In this thesis, a multi scale dot enhancement filter is used to detect these low-density nodules which may remain undetected in the absence of any enhancement algorithm and can affect the accuracy of the system. In the first step, a Gaussian smoothing on all the corresponding 2D slices is performed to reduce the noise and sensitivity effect. After Gaussian smoothing, Hessian matrix and its eigen values |?2|<|?1| are calculated for every pixel to determine the local shape of the structure. The suspected pulmonary nodule region exhibits the form of a circular or oval object whereas vascular tissue structures presents a line-like elongated structure. Therefore, this property can be used to distinguish different shape structures present in lung region. This process is repeated for different scales and finally we integrate the filter’s output values to obtain the maximum value for the best enhanced effect and generate the resultant image. After image enhancement, lung nodule candidates are detected using optimal thresholding. Then a rule-based analysis has been made based on some initial measurements like area, diameter and volume whether to keep or discard the detected nodule candidate. The advantage of rule-based analysis is that it eliminates the objects which are too small or too big to be considered as a nodule candidate and thus reduces the workload for the next stage. 3. A hybrid feature set is obtained after rigorous experimentation which increases the classification accuracy and reduces the false positive per scan considerably. The proposed feature set plays a crucial role in the overall performance of the CAD system. We selected a large pool of features initially and then trimmed down the set on the basis of accuracy and false positive per scan and ultimately obtained the proposed hybrid feature set. 4. The classification of pulmonary nodules is done using SVM algorithm. In the classification phase, the suspected pulmonary nodules are divided into true pulmonary nodules and false pulmonary nodules. SVM as a high-dimensional multi-feature hyperplane differentiation algorithm performs considerably well in a situation where it must decide only between the two classes i.e., nodule or non-nodule and the features of the suspected pulmonary nodules refer mainly to the two classes and the Gaussian Radial Basis Function (RBF) kernel function can increase its linear separability which makes the detection and classification of pulmonary nodules more accurate. 5. We have done an extensive evaluation of our proposed system on Lung Image Database Consortium (LIDC). LIDC is a publicly available database accessible from The Cancer Imaging Archive (TCIA). We have considered the 850 scans (LIDC-IDRI-0001 to LIDC-IDRI 0844) of this dataset, which contains nodules of size 3-30 mm fully annotated by four expert radiologists in two consecutive sessions. K-fold cross-validation scheme is used for model selection and validation whereas the k value varies for 5, 7 and 10. An exhaustive grid search has been used to tune the hyperparameters of SVM classifier. Some other classifiers have also been used for classification of lung nodule candidates. An attempt has also been made to determine the most relevant feature class for lung nodule detection system. The achieved sensitivities at detection and classification stages are 94.20% and 98.15%, respectively, with only 2.19 FP/scan. The results of our proposed method show the superiority of our scheme as compared to other systems with increased sensitivity and reduced FP/scan. The main contribution of this dissertation is the presentation of a relatively simple nodule detection scheme that has a very good performance in an extensive experimental analysis. In addition, the proposed feature set has helped in reducing the false positives significantly and has increased the sensitivity of the proposed system. Moreover, a comparison has been made to determine the most relevant feature class in extracted feature set. The overall sensitivity has been improved compared to the previous methods and FP/scan have been reduced significantly.
Loading...
Loading...

Similar Books

Loading...

Similar Chapters

Loading...

Similar News

Loading...

Similar Articles

Loading...

Similar Article Headings

Loading...

کواڑی دی کھچڑی

کواڑی دی کھچڑی

اک وار دی گل اے کہ اک بندہ اپنے پنڈ توں دوجے پنڈ کسے کم نال جا رہیا ہوندا اے۔ ایہہ پنڈ اوس دے پنڈ توں بہت دور ہوندا اے۔ سفر کردے ہوئے اوہنوں اک ویران جگہ اُتے شام پے جاندی اے۔ اوتھے اوہنوں کوئی گھر نظر نئیں آندا۔ جتھے اوہ رات گزار سکے۔ تھوڑا ہور فاصلہ کرن توں بعد اوہنوں دوروں اک گھر وچ روشنی نظر آندی اے۔ اوہ اوس روشنی ول سفر کر کے اوس گھر اپڑ جاندا اے۔ اوہدے بوہے اُتے دستک دیون توں بعد گھر وچوں اک مائی نکلدی اے تے اوس کولوں دستک دیون دی وجہ پچھدی اے۔ اوہ آکھدا اے کہ اوہ اک مسافر اے تے اوہنوں سفر وچ شام پے گئی اے۔ اوہ مائی نوں آکھدا اے کہ اج دی رات مینوں ایتھے سون دی اجازت دیو۔ میں سویر چلا جاواں گا۔ مائی اوس نوں اندر لے آندی اے تے سون لئی اک منجی دے دیندی اے۔

مائی بڑی کنجوس ہوندی اے اوہ اوس نوں کھاون لئی کجھ نئیںدیندی۔ کافی دیر بھکھے رہن توں بعد اوس نوں اک خیال آندا اے تے اوہ مائی نوں آکھدا اے کہ اماں توں کدے کواڑی دی کھچڑی کھاہدی اے۔ مائی آکھدی اے کہ نہیں پترا۔ اوہ مائی نوں آکھدا اے کہ میں اج تہانوں کھچڑی بنا کے کھوانا واں بس توں مینوں کواڑی تے برتن دے۔ مائی اوس نوں برتن دے دیندی اے۔ اوہ کواڑی نوں برتن وچ رکھ کے اوہدے وچ پانی پاندا اے تے برتن نوں چلہے اُتے رکھ دیندا اے۔

کجھ دیر توں بعد اوہ مائی نوں آکھدا اے کہ اماں جے ایہدے وچ تھوڑے جیہے چول تے تھوڑی دال پا دتی جاوے تاں کھچڑی بڑی مزے دار بنے گی۔ مائی اوس نوں چول تے دال دے دیندی...

Istisnā’- a Realistic Approach to the Concept in Islamic Finance and its Application to the Agricultural Sector in Pakistan

Farmers predominantly belong to lower class of the society, particularly in developing and under developing countries. This actuality really put them on back-foot in every sphere of life, including their various agricultural activities.  For instance, they always face problems to fulfil their agricultural requirement, both for crop and non crop activities, and hence, not in position to get utmost benefits from their efforts. Being citizens of a developing country, Pakistani farmers come across the identical situation. As they are Muslims, therefore, avoid securing interest based loan from the financial institutions. Islamic financial system provides an alternate to such interest based arrangement in the shape of various financing techniques. Among these, Istisnā’ (manufacturing) is the most important one which can be used effectively for the fulfilment of various agricultural requirements. However, its role is more dominant in the satisfaction of non crop agricultural activities that is for example, manufacturing of some heavy agricultural machinery and equipments, installation of tube-wells and channels for appropriate irrigation system, construction of small houses for farmers in their lands etc. The present work discusses the theoretical background of this mode, available in the scholarly work of classical and contemporary Muslim jurists’ work, followed by the description that how it can be used for financing various sectors of agriculture. Study reveals the transaction is equally viable for the development of all sectors of agriculture like local farming, fish farming, dairy farming, poultry farming, horticulture etc. The intended results can be achieved when the financial institutions apply the transaction in its true spirit and philosophies envisaged for it by Islamic commercial law, and not mere a source of earning profit.

Drift Effects on Plasma Waves

The full kinetic dispersion relation for the Geodesic acoustic modes (GAMs) including diamagnetic effects due to inhomogeneous plasma density and temperature is derived by using the drift kinetic theory. The fluid model including the effects of ion parallel viscosity (pressure anisotropy) is also presented that allows to recover exactly the adiabatic index obtained in kinetic theory. We show that diamagnetic effects lead to the positive up-shift of the GAM frequency and appearance of the second (lower frequency) branch related to the drift frequency. The latter is a result of modification of the degenerate (zero frequency) zonal flow branch which acquires a finite frequency or becomes unstable in regions of high temperature gradients. By using the full electromagnetic drift kinetic equations for electrons and ions, the general dispersion relation for geodesic acoustic modes (GAMs) is derived incorporating the electromagnetic effects. It is shown that m=1 harmonic of the GAM mode has a finite electromagnetic component. The electromagnetic corrections appear for finite values of the radial wave numbers and modify the GAM frequency. The effects of plasma pressure βe, the safety factor q and the temperature ratio τ on GAM dispersion are analyzed. Using the quantum hydrodynamical model of plasmas, the stability analysis of self-gravitational electrostatic drift waves for a streaming non-uniform quantum dusty magneto-plasma is presented. For two different frequency domains i.e., Ω0d<<ω<Ω0i (unmagnetized dust) and ω<< Ω0d < Ω0i (magnetized dust), we simplify the general dispersion relation for self-gravitational electrostatic drift waves which incorporates the effects of density inhomogeneity ∇n0α, streaming velocity v0α due to magnetic field inhomogeneity ∇B0, Bohm potential and the Fermi degenerate pressure. For the unmagnetized case, the drift waves may become unstable under appropriate conditions giving rise to Jeans instability. The modified threshold condition is also determined for instability by using the intersection method for solving the cubic equation. We note that the inhomogeneity in magnetic field (equilibrium density) through streaming velocity (diamagnetic drift velocity) suppress the Jeans instability depending upon the characteristic scale length of these inhomogeneities. On the other hand, the dust-lower- hybrid wave and the quantum mechanical effects of electrons tend to reduce the growth rate as expected. A number of special cases are also discussed.