²`«×¾Ç²ß©óÂå¾Ç¼v¹³¤ÀªR¡X Deep learning in medical image analysis

Fall 2022½Òµ{ºõ­n

 

 


±Â½Ò±Ð®v

¶À«aµØ±Ð±Â

¿ì¤½«Ç¡Gºî¦X¤@À]423«Ç

¹q¸Ü¡G03-5131334

¹q¤l¶l¥ó¡Gghuang@nycu.edu.tw

¤W½Ò®É¶¡»P¦aÂI

¨C¬P´Á¤­13:20-16:30©óºî¦X¤@À]427«Ç

½Òµ{ºô­¶

http://ghuang.stat.nctu.edu.tw/course/dlmia22/

¶}½Ò³æ¦ì

²Î­pºÓ

¥Ã¤[½Ò¸¹

SCIS30031

¾Ç¤À¼Æ

3

 

½Òµ{·§­z»P¥Ø¼Ð

 

¾÷¾¹¾Ç²ß(machine learning)ªº³Ì·s¶i®i¡A¯S§O¬O¦b²`«×¾Ç²ß(deep learning)¡A¹ï©óÂå¾Ç¼v¹³ªºÃѧO¡B¤ÀÃþ©M¯S¼x¿ï¨ú²£¥Í¤F¥¨¤jªº§U¯q¡C³o¨Ç¥ý¶iªº²`«×¾Ç²ß¤èªk¡A¤]±q¦Ó´£°ª¤FÂå¾Ç¼v¹³©ó¦UºØÁ{§ÉÂåÀø¤WªºÀ³¥Î¡C

 

¥»½Òµ{±N¥H¹ê»ÚªºÂå¾Ç¼v¹³¼Æ¾Ú¬°®Ö¤ß¡A·f°tPython³nÅ骺¨Ï¥Î¡A¤Þ¾É½Òµ{°Ñ»PªÌ±µÄ²¨Ã¾Ç²ß¡G(1)Âå¾Ç¼v¹³­ì²z»P³B²zÀx¦s¨t²Î¡A(2)²`«×¾Ç²ß¤èªk»P­ì²z¡A¥H¤Î(3)²`«×¾Ç²ß¤èªk©ó¯S©wÂå¾Ç¼v¹³¤ÀªR¤WªºÀ³¥Î¡C

 

½Òµ{¦@¤À¥|¤j¥DÃD¡A¤À§O¬°¡G

 

¥DÃD1¡X³æ¥ú¤l¹q¸£Â_¼h±½´y(single photon emission computed tomography, SPECT)ªº¦hÃþ§O¤ÀÃþ(multiclass classification)¡F

¥DÃD2¡X®ÖºÏ¦@®¶³y¼v(magnetic resonance imaging, MRI)ªº3D¼v¹³¤ÀªR¡F

¥DÃD3¡X¶W­µªi±½´y(sonography)©óÀV°Ê¯ß¤À³Î(segmentation)»P¦å¬y³t«×µû¦ô¡F

¥DÃD4¡XX¥ú¼v¹³(X-ray)¤¤±`¨£¯Ý³¡¯e¯f¤§ª«¥ó°»´ú(object detection)¡C

 

­ì«h¤W¡A¨C¤@¥DÃD±N¥H¤T©Pªº®É¶¡§¹¦¨±Â½Ò¡G²Ä¤@©P¤¶²Ð¬ÛÃöªºÂå¾Ç¼v¹³­ì²z»P³B²zÀx¦s¨t²Î¡A²Ä¤G©P»¡©úÀ³¥Îªº²`«×¾Ç²ß¤èªk»P­ì²z¡A²Ä¤T©P«h°Q½×²`«×¾Ç²ß¤èªk©ó¸ÓÂå¾Ç¼v¹³¤ÀªR¥DÃD¤WªºÀ³¥Î»P¬ÛÃö¤èªkªºPython³nÅé¹ê§@¡C

 

¤W½Ò¤º®e¡A±N¼sªx¥]§t©Ò¦³¬ÛÃöª¾ÃÑ¡A¤W½Ò®É°¼­«Á¿­z³o¨Çª¾ÃѪº°ò¥»Æ[©À»P¼Ò«¬¸ÑÄÀ¡C¹ï©ó²`¤Jªº²z½×»P¨ä¾l¸Ô²Ó¸ê°T¡A«h¶È§@­«ÂI´£¥Ü©Î´£¨Ñ°Ñ¦Ò¤åÄm¡C½Ò°ó¤¤±N¥H¹ê»Úªº¨Ò¤l¨Ó¸É¥R¤W½Ò¤º®e¡A¨Ã°Q½×¬ÛÃö¤èªkªºPython³nÅ骺¹ê§@¡C

 

¾Ç´Á¦¨ÁZªºµû©w¡A«h¨Ì¾Úú¥æªº§@·~(4¥÷)»P½Òµ{¹ê§@­p¹º³ø§i¡C§Ú­Ì±Nµ²¦X¤£¦P­I´ºªº¾Ç¥Í²Õ¦¨½Òµ{¹ê§@­p¹º¤u§@¤p²Õ¡A¨C¤@¤u§@¤p²Õ±N¦U¦Û¿ï©w¤@Âå¾Ç¼v¹³¤ÀªR©ÎÀ³¥ÎijÃD¡A°w¹ï¯S©wªº°ÝÃD´£¥X¸Ñ¨M¤è®×¡A¹ê§@¾ã­ÓÂå¾Ç¼v¹³¤ÀªR¡C

 

½Òµ{²Õ¦¨³¡¤À

 

½Ò°óÁ¿¸Ñ

­ì«h¤W¡A¨C¬P´Á¤­13:20-16:30¡A¥Ñ±Â½Ò±Ð®v¡BÁܽÐÁ¿ªÌ©Î½Òµ{§U±Ð¡A¶i¦æ¬ÛÃö¤º®eªºÁ¿¸Ñ¡C¨C¤@½Òµ{¥DÃD²Ä¤@©PªºÂå¾Ç¼v¹³­ì²z¤¶²Ð¡A·|¥Ñ¸q¦u¤j¾Ç Âå¾Ç¼v¹³º[©ñ®g¬ì¾Ç¨t ³¯®õ»«±Ð±Â¥DÁ¿¡A²Ä¤G©Pªº²`«×¾Ç²ß¤èªk¡A«h¥Ñ¶§©ú¥æ³q¤j¾Ç ²Î­p¾Ç¬ã¨s©Ò ¶À«aµØ±Ð±Â±Â½Ò¡A²Ä¤T©PªºÂå¾Ç¼v¹³¤ÀªRÀ³¥Î»PPython³nÅé¹ê§@¡A«h¥Ñ¤W­z¨â¦ì±Ð±Â»P½Òµ{§U±Ð¦@¦PÁ¿¸Ñ¡C

 

¤W½Ò¤º®e¡A±N¼sªx¥]§t©Ò¦³¬ÛÃöª¾ÃÑ¡A¤W½Ò®É°¼­«Á¿­z³o¨Çª¾ÃѪº¥Í¦¨°Ê¾÷¡B°ò¥»Æ[©À»P¼Ò«¬¸ÑÄÀ¡C¹ï©ó²`¤Jªº²z½×»P¨ä¾l¸Ô²Ó¸ê°T¡A«h¶È§@­«ÂI´£¥Ü©Î´£¨Ñ°Ñ¦Ò¤åÄm¡C´Á¬ß¤é«á·í¾Ç¥Í¿W¥ß¶i¦æÂå¾Ç¼v¹³¤ÀªR®É¡A³o¨Ç¼sªxªºª¾ÃÑ¡A¯à¼W¼s¥L­Ì«ä¦Ò°ÝÃDªº¨¤«×¡A¨Ã¦¨¬°²³¦h¥L­Ì¥i¿ï¾Üªº¸Ñ¨M¤è®×¡C­Y­n¶i¦æ§ó²`¤Jªº¼Ò«¬¬ã¨s»P²z½×±À¾É®É¡A«hª¾¹D­n±q¦ó¤U¤â»P¨ì¦ó³B¥h§ä´M¬ÛÃöªº»²§U¸ê°T¡C

 

½Ò«e¡B½Ò«áªº¦Û¦æ¾\Ū¡B¦Û¦æ¾Ç²ß

½Ò°óÁ¿¸Ñ·|¼sªx¥]§t©Ò¦³¬ÛÃö¥DÃD¡A°¼­«Æ[©ÀªºÁ¿­z¡C¸É¥R»P­l¥Í¤º®e¡A«h·|´£¨Ñ¬ÛÃö¨Ó·½»Pºô¸ô³sµ²¡A­n¨D¾Ç¥Í©ó½Ò«e©Î½Ò«á¦Û¦æ¾\Ū¡C¤S¥Ñ©óÂå¾Ç¼v¹³¤ÀªR»â°ìªº½´«kµo®i¡A¬ÛÃö¶}©ñ½Òµ{¡B¤ÀªR¤èªk¡B¤ÀªR¤u¨ã¡B¦¨ªGÀ³¥Î¡B¶}©ñ¸ê®Æ¡B¡Kµ¥¹M§G©óºô¸ô¡A¦]¦¹¦P¾Ç­Ì«h±`»Ý­n¡]©Î¥i¥H¡^¦Û¦æ¾Ç²ß·sªº³nÅé¡B¤u¨ã¡A¨Ã§l¦¬·sªºª¾ÃÑ¡BÀ³¥Î¡Cª`·N¡A³\¦hºô¸ô³sµ²»P¤å¥ó¬O¥H­^¤å¼¶¼g¡A­^¤å¾\Ūªº¯à¤O±N·|«D±`­«­n¡C

 

§@·~

¨C¤@¥DÃD½Òµ{§¹¦¨«á¡A±N·|´£¨Ñ¸Ó¥DÃDªºÂå¾Ç¼v¹³¼Æ¾Ú¡AÅý¾Ç¥Í½m²ß¼v¹³ªº²M²z¡B¦s¨ú¡F¸ê®Æ¡Bµ²ªGªºµøı¤Æ¡F¦p¦ó¹B¥Î¥¿½T¡B·s¿oªº²`«×¾Ç²ß¤èªk¡C§@·~ªº¥Øªº¦b¾Ç²ß¹ê§@²`«×¾Ç²ß¤èªk¡A¨Ã¥B´ú¸Õ§A¹ï½Ò°ó¤º®eªº²z¸Ñµ{«×¡C§â¼g§@·~µø¬°¤@­Ó¾Ç²ßªº¾÷·|¡A¦Ó¤£¬O¬°¤F­nÁȨú¤À¼Æ¡C

 

¥Ñ©ó¤j³¡¥÷ªº§@·~°ÝÃD¡A·|¶·­n¥HPython³nÅé¨Ó¶i¦æ¹ê§@¡B¤ÀªR¡A¦]¦¹­n¨D¦P¾Ç­Ìªº§@·~­n¥Hjupyter (https://jupyter.org/)ªº®æ¦¡¨Ó¼¶¼g¡Cjupyter¯à±N§Aªº¤å¦r»¡©ú¡B¼Æ¾Ç¦¡¤l¡BPythonµ{¦¡¡BPython°õ¦æµ²ªG¡B¡Kµ¥¡Aµ²¦X¦¨¤@­Ó¤å¥ó¡A¦p¦¹±N©ö©ó¥L¤H¾\Ū»P­«»s(reproduce)§Aªº¤ÀªR¡C

 

§A¥i»P¨ä¥L¦P¾Ç°Q½×§@·~¡A¥HÀ°§U²z¸Ñ©Ò°Ýªº°ÝÃD¡BÂç²M½Òµ{·§©À¡C¦ý¬O§A¥²¶·¿W¥ß§¹¦¨©Òú¥æªº§@·~¡A§@·~¤¤­n¨D¼gªº¹q¸£µ{¦¡¡B¶]ªº¸ê®Æ¤ÀªR¡B¸ÑÄÀªº¤ÀªRµ²ªG¡A³£¤£¥i»P¥L¤H¦@¦P¦X§@¡C

 

½Òµ{¹ê§@­p¹º

­×½Ò¾Ç¥Í¶·§¹¦¨¤@¥÷Âå¾Ç¼v¹³¤ÀªRªº­p¹º¡A¨ä¥Øªº¦bÅý§A¯à´N¤@­Ó©ÒÃö¤ß©Î¦³¿³½ìªºÂå¾Ç¼v¹³(¥i¥H¬O½Ò°ó¤W´£¨Ñªº©Î¦Û¦æ¨úªº¸ê®Æ)¡A¹B¥Î©Ò¾Çªº¤èªk»P§Þ³N¡A±q°ÝÃD§Î¦¨¡B¸ê®Æ¨Ó·½½T»{¡B¸ê®Æ·j¶°¡BÀx¦s»P¾ã²z¡B¼Ò«¬«Ø¥ß»P¤ÀªR¡Bµ²ªG§e²{¡B»¡©ú»Pµøı¤Æ¡A¹ê§@¾ã­ÓÂå¾Ç¼v¹³¤ÀªR­pµe¡A¥H¤@¿sÂå¾Ç¼v¹³¤ÀªRªº¥þ»ª¡C

 

¨C¥÷­p¹º³ø§i±N¥Ñ³Ì¦h4¦ì­×½Ò¦P¾Ç¦@¦P§¹¦¨¡A¦¨­û´Á¬ß¯àµ²¦X¤£¦P±M·~­I´º¡]²Î­p¡B¸ê¤u¡B¨ä¥L±M·~ª¾ÃÑ»â°ì¡^¡C¨C¤@³ø§i¤u§@¤p²Õ¡A±N¦U¦Û¿ï©w¤@­Ó©ÒÃö¤ß©Î¦³¿³½ìªºÂå¾Ç¼v¹³¤ÀªR©ÎÀ³¥ÎijÃD¡C¾Ç´Á¤¤¡A¨C­Ó²Õ­û±N¥ý´N­pµe¥DÃD¡]¥]§t¡G´y­z°ÝÃD¡B¹w­p¦p¦ó¦^µª¡^¡A¦U¦Ûú¥æ¤@¥÷®Ñ­±³ø§i¡C¾Ç´Á¥½¡A¾ã­Ó¤u§@¤p²Õ±N´N­p¹ºªº¡G°ÝÃD¡]¥Øªº¬°¦ó¡H·Q¹w´ú©Î¦ô­p¤°»ò¡H¡^¡B¸ê®Æ¡]¨º¸Ì¨Óªº¡H¬Ý°_¨Ó¹³¤°»ò¡H¡^¡B¤ÀªR¼Ò«¬¡Bµ²ªG¡]·sµo²{¡B»PÅ¥²³·¾³q¡Bµøı¤Æ¡^¡A¶i¦æ15¤ÀÄÁªº¤fÀY³ø§i¡A»Pú¥æ³Ì²×®Ñ­±³ø§i¡C

 

¥ý­×¬ì¥Ø©Î¥ý³Æ¯à¤O

 

1.        ¦³¼g¹q¸£µ{¦¡ªº¸gÅç

l   ¹³¡GC, C++, Java, Python, R,¡K

2.        ³Ì¦n­×¹L°ò¦²Î­p¾Ç

l   ª¾¹D¡GÀH¾÷ÅܼơB«H¿à°Ï¶¡¡B°²³]ÀË©w¡B¡K

3.        Ä@·N¾Ç²ß·sªº³nÅé¡B¤u¨ã

l   ±`·|«D±`ªá®É¶¡

l   ­n¤j¶q¾\Ūºô¸ô¤Wªº¤å¥ó

l   ¾\Ū³\¦h­^¤å¤å¥ó

 

½Òµ{¹ê§@³nÅé»P±Ð¬ì®Ñ

 

¥»ªù½Ò±N·|¥HPython³nÅé(https://www.python.org/)¡A¨Ó·í§@¤ÀªR¹ê§@ªº¤u¨ã¡C¦]¦¹¤£½×ºt²ß½Ò§U±ÐÁ¿¸Ñ»P§@·~°ÝÃD¡A¬Ò·|¥HPython³nÅ骺¾Þ§@»P¼¶¼g¬°°ò¦¡C¦P¾Ç­Ìªº§@·~­n¥Hjupyter (https://jupyter.org/)ªº®æ¦¡¨Ó¼¶¼g¡A¥H§Q©ó±N§Aªº¤å¦r»¡©ú¡B¼Æ¾Ç¦¡¤l¡BPythonµ{¦¡¡BPython°õ¦æµ²ªG¡B¡Kµ¥¡Aµ²¦X¦¨¤@­Ó¤å¥ó¡A¤è«K¥L¤H¾\Ū»P­«»s§Aªº¤ÀªR¡C

 

¥»ªù½ÒÁöµL«ü©w¡B¥²¶·ÁʶRªº±Ð¬ì®Ñ¡AµM¬ÛÃöªº¦Û¦æ¾\Ū¡B¸É¥R±Ð§÷¤º®e¡A±N¥X¦Û¥H¤U´X¥»°Ñ¦Ò®ÑÄy¡G

1.        Goodfellow I, Bengio Y, Courville A (2016): Deep learning. The MIT Press. (DL) ³o¥»®Ñªº¬ÛÃö°T®§¡A¥i±q¥H¤U³sµ²Àò±o¡Ghttps://www.deeplearningbook.org/

2.        Zhou SK, Greenspan H, Shen D (editors) (2017): Deep Learning for Medical Image Analysis. Academic Press. (DLMIA)

3.        Hastie T, Tibshirani R, Friedman J (2009): The Elements of Statistical Learning (2nd edition). Springer. (ESL) ³o¥»®Ñ¬O¡u¾÷¾¹¾Ç²ß¤èªk¡vªº¥D­n°Ñ¦Ò®Ñ¥Ø¡C

 

¥»½Òµ{©Ò¦³¤W½Ò§ë¼v¤ù»P¬ÛÃö¸É¥R¸ê®Æ¡AÁÙ¦³¥Î¥H°õ¦æ¹ê»Ú¤ÀªR¨Ò¤lªºPythonµ{¦¡¡A³£±N·|¤½§G©ó½Òµ{ºô­¶¡C

 

¾Ç´Á¦¨ÁZµû¤À¤è¦¡

 

¾Ç´Á¦¨ÁZªº­pºâ¤è¦¡¬°¡G

1.        §@·~¡G60%¡]®Ú¾Ú­Ó¤Hú¥æ¤§§@·~¡^

2.        ¹ê§@­p¹º´Á¤¤³ø§i¡G10%¡]®Ú¾Ú­Ó¤Hú¥æ¤§®Ñ­±³ø§i¡^

3.        ¹ê§@­p¹º´Á¥½³ø§i¡G30%¡]®Ú¾Ú¾ã­Ó¤u§@¤p²Õªº³ø§i¡^