笔记@Lung Cancer Detection on CT Scan Images A Review on the Analysis Techniques

Lung Cancer Detection on CT Scan Images A Review on the Analysis Techniques

0. Introduction

1. Review of existing nodule detection methods

1.1 Pre_processing

1.2 Segmentation

  • 2D-based segmentation

① Thresholding based methods[7][8][11][10][17][26][76][99]

② Stochastic methods[22][40]

③ Region based methods[1][18][20][28][59][62][63][79][80]

④ Contour based methods[9][44][47][49][77][82][95]

⑤ Learning based methods[4][19][45][58][90]

  • 3D-based approaches

① Thresholding methods[91][92][96]

② Mathematical morphology[30][38][52][53][56][57][69]

③ Region-based methods

  • Region growing[19][21][37][54][55]
  • Graph-based methods(Graph-cut)[97][98]

④ Model-based methods(Deformable models)[14][25][24][29][47][48][83][93][258]

⑤ Dynamic programming[86][87]

1.3 Nodule extraction and classification

  • Fuzzy classification and Neural Networks---[2][4][12][13][19][43][52][61][62][73][86]
  • K-Nearest Neighbor---[25][50][66][81][96]
  • Support vector machines---[36][46][65][70]
  • Linear Discriminant Analysis---[5][33][41][49][67]

2. Conclusion

  • Developing new and better techniques of contrast enhancement;
  • selecting better criteria for performance evaluation is also needed.

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